Skip to main content

ORIGINAL RESEARCH article

Front. Public Health, 22 January 2024
Sec. Children and Health

The association between Internet use and cognitive ability among rural left-behind children in China

Ai-zhi GaoAi-zhi GaoWei-chao Chen
Wei-chao Chen*
  • Hunan Normal University, Changsha, China

Introduction: This study focuses on the cognitive development of rural children aged 10–15 who have been left behind, utilizing data from the China Family Panel Studies (CFPS) datasets of 2016 and 2020. The primary objective is to investigate the correlation between Internet usage and the cognitive ability of these children.

Methods: An Ordinary Least Squares (OLS) regression model was initially employed to explore the potential influence of Internet use on the cognitive ability of rural left-behind children. To meticulously address potential endogeneity, we employed the instrumental variable (IV) method. Additionally, we performed robustness checks using Propensity Score Matching (PSM) to ensure the reliability of our findings.

Results: The findings indicate a statistically significant positive correlation between Internet usage and the cognitive ability of left-behind rural children. Notably, the impact of Internet use is more pronounced in girls than in boys among this demographic. Furthermore, a significant influence of Internet usage on the cognitive ability is observed in rural children aged 10–12, whereas no significant correlation is found for those aged 13–15. Particularly noteworthy is the substantial impact of Internet use on the cognitive ability of left-behind children with an absent father. In addition, the cognitive benefits associated with Internet use were notably more pronounced among rural left-behind children, especially when considering factors such as attendance at a demonstration school and parental concern for the child’s education.

Conclusion: This study underscores the importance of understanding the relationship between Internet usage and cognitive development in left-behind rural children. These findings highlight the need for targeted interventions and inclusive access to online resources for the development of rural left-behind children.

Introduction

The process of urbanization has precipitated an influx of rural laborers into urban areas, culminating in a substantial rise in the population of rural left-behind children in China. The 2021 data from the Chinese Ministry of Civil Affairs reveals that as of the end of the 13th Five-Year Plan period, there were a total of 6.436 million rural left-behind children in China (1). Adolescence is a pivotal stage in cognitive and psychological development. Research underscores the pivotal role of parental companionship in influencing both cognitive and non-cognitive development among junior high school-aged children (2). Notably, the act of being left behind bears a significant negative impact on children’s cognitive ability (3).

The Internet has undergone a transformative journey, evolving from a simple source of entertainment to a versatile tool deeply ingrained in both production and daily life. Its widespread usage has rendered it indispensable in households, where it serves myriad purposes such as online learning, entertainment, and remote communication. This shift positions the Internet as a viable alternative to address educational gaps, particularly for rural left-behind children. A significant turning point occurred in July 2021 when the Chinese Government introduced the ‘Double-Reduction’ policy, sparking widespread discussion. This initiative sought to alleviate the academic burden on students by reducing homework while simultaneously tightening regulations on private tutorial companies. The outcome of this policy is a surplus of time for students after school, potentially leading to increased access to the Internet. After-school programs, crafted to augment students’ academic performance, have demonstrated a significant impact on their cognitive development. Gardner (4) posited that after-school programs, specifically crafted to improve students’ academic performance, exerted a notable influence on their cognitive development. Notably, individuals who adeptly utilized computers within these programs showcased superior performance in vocabulary, reading comprehension, and numeracy, surpassing the mean scores reported by Attewell et al. (5). This correlation underscores the potential benefits of strategic Internet use in after-school settings, suggesting a positive impact on diverse cognitive skills.

In this context, the additional free time can be viewed as an opportunity for students to engage with online resources, educational content, and a plethora of learning materials available on the Internet. The shift toward increased Internet usage aligns with the changing landscape of education, providing students with a platform to explore and enhance their knowledge beyond traditional classroom settings. The intersection of reduced academic pressure and heightened Internet access could pave the way for a more dynamic and personalized learning experience for students. As they navigate the online landscape, they can explore diverse educational avenues and capitalize on the wealth of information at their fingertips.

Despite an increasing body of research on the Internet’s crucial role in the cognitive development of adolescents, a consensus remains elusive. Scholars are divided, with some contending that the Internet reshapes cognitive processes through digital communication, significantly enhancing adolescents’ reading comprehension and logical deduction abilities (6). Conversely, an opposing viewpoint posits that the Internet’s features, such as online learning and communication, hinder the personality development of adolescents, potentially leading to Internet addiction and subsequent academic impediments (7).

While studies on the relationship between Internet use and the cognitive ability of children abound, there is a dearth of research specifically exploring the impact on rural left-behind children. As a pervasive medium, the Internet may function as an alternative educational tool to compensate for the absence of familial and school-based education for these children. Additionally, an in-depth examination of Internet use, categorized by online learning, socialization, and entertainment, would augment the depth of the study. Consequently, drawing on data from the China Family Panel Studies (CFPS) in 2016 and 2020, this study employs benchmark regression estimation and the propensity score matching (PSM) method to discern the net effect of Internet use on the cognitive ability of rural left-behind children. This empirical investigation aims to contribute substantively to the understanding of cognitive ability enhancement among rural left-behind children.

Literature review

Cognitive ability is the human capacity to extract, store, and utilize information from the objective world, underscored by a comprehensive understanding of the laws governing the movement, change, and developmental trajectories of phenomena. This primarily encompasses abstract thinking, logical deduction, memory, and other cognitive skills (8). New human capital theory regards the development and formation of cognitive ability as a dynamic process and posits that cognitive ability has high plasticity in the stage of childhood (9). The impact of cognitive ability extends uniformly across all facets and stages of an individual’s development.

Children’s cognitive ability was influenced by various factors, including parental companionship, educational expectations, and family migration. Extensive research indicated that prolonged parental absence in rural Chinese families adversely affected children’s cognitive development and academic performance (10). Wu et al. (11) delved deeper into the distinctions in cognitive ability among children ‘left behind by father/mother/both parents’ separately. The findings underscored the significant role mothers played in children’s development, with their absence exhibiting a more pronounced negative impact on children. Concurrently, the disparity in educational resources and its implications for the cognitive development of rural left-behind children could not be overlooked. As the Internet became increasingly pervasive in people’s lives, a growing body of research commenced to scrutinize the influence of the Internet on children’s cognitive ability.

There was no conclusive consensus regarding the impact of Internet usage on the cognitive ability of children. One perspective posited that Internet utilization fostered the enhancement of children’s cognitive capacities by offering convenient and cost-free communication channels that facilitated information exchange. Orben and Przybylski (12) noted that a moderate level of Internet use, such as 1–2 h a day, was associated with slightly higher levels of psychological functioning. Buchanan argues that computers and the Internet are some of the best technologies for cognitive enhancement because they open the possibility for instantly accessing information, anytime and anywhere (13). Cui (14) asserted that a substantial portion of youths’ social cognition emanated from online interactions. Some argue that transferring memories to the Internet can be advantageous as it facilitates the more efficient allocation of cognitive resources. Therefore, employing Internet-based devices can foster more creative thinking and problem-solving abilities (15, 16). Sina et al. (17) found that extensive smartphone/internet exposure was associated with higher impulsivity and cognitive inflexibility scores, especially in girls.

Another viewpoint suggested that the mixed messages conveyed through the Internet might have adversely affected the cognitive development of children who lacked the ability to discriminate. Fitz and Reiner (6) and other researchers noted that Internet use also reduced cognitive ability. Hadlington (18) analyzed the issue from a biological perspective, suggesting that Internet use might have caused impaired attention. Moreover, the Internet had the potential to impede the cognitive development of adolescents by inducing Internet addiction and subsequent loss of focus. Zhou and Ding (19) found that Internet use time is not linked to cognitive ability among Chinese junior middle school students.

Materials and methods

Data processing

CFPS devised two distinct sets of cognitive measures, employing an alternating annual schedule, thereby accumulating a total of four sets of inquiries. One set of questionnaires including both a word test and a math test (used in 2010, 2014, and 2018). Conversely, an additional set of surveys comprised evaluations of memory and sequential aptitude, administered during 2012 and 2016. To maintain data consistency, our investigation exclusively relied on the datasets derived from Chinese Family Panel Studies 2016 and 2020 (CFPS2016&2020). The study was conducted by the China Social Science Survey Center of Peking University and reflected the social and economic problems in the country by tracking and collecting data at three levels: individual, family, and community.

The individual database within CFPS comprised highly detailed information, encompassing variables like mathematical and verbal scores obtained from cognitive ability assessments at the individual level. Utilizing personal IDs enabled the integration of the individual database with the child proxy database, facilitating the acquisition of comprehensive personal information; Employing the household sample code facilitated the connection between the individual database and the family economic database, allowing access to data on household income and related details; By utilizing the father and mother sample codes, the individual database could be correlated with parental information, thereby extracting details about the parents of the surveyed respondents. This procedural approach enabled the aggregation of both individual and familial data, laying the foundation for subsequent research and analysis.

In this investigation, the term “rural left-behind children” refers to individuals aged 17 years or younger with rural household registration, whose parents are working outside and are unable to live with their parents under normal circumstances (20). Consequently, the study sample should meet the following three criteria: (1) Aged 17 years or younger. (2) Rural left-behind children. (3) Either or both of the parents had been employed for 6 months or longer. Participants were asked, “How long did you live with your father or mother in the past 12 months?” for result assessment. Excluding samples with incomplete interviews or survey results, a valid sample of 1,669 rural left-behind children, comprising 833 boys and 836 girls, was ultimately obtained.

Measurements

Dependent variable

The dependent variable in this study is “child’s cognitive ability” of rural left-behind children. Cognitive ability is defined as the brain’s capacity to process information. This study chose the scores of questions reflecting number series ability and memory ability in the CFPS questionnaire to measure cognitive ability. The total cognitive ability score, serving as a proxy variable for children’s cognitive ability, is obtained by first standardizing the ‘number series tests’ and ‘memory test’ within the CFPS modules for the years 2016 and 2020, and then summing their scores.

Independent variable

The independent variable in this context is the decision whether to use or not use the Internet. Drawing from the study conducted by Wang and Liu (21), the CFPS2016 and CFPS2020 questionnaires posed two inquiries: “Do you use mobile devices, such as a mobile phone or tablet PC, for Internet access?” and “Do you use a computer to access the Internet?” A positive response to either question results in the assignment of a value of 1 to the variable, while a negative response leads to the assignment of a value of 0.

Control variable

The developmental juncture spanning ages 10–15 demarcates a pivotal epoch in the cognitive maturation of children, wherein their comprehensive advancement is notably molded by individual determinants, scholastic tutelage, familial milieu, and assorted influential factors. Consequently, the study incorporates control variables sourced from the tripartite dimensions elucidated in Table 1, discerned from extant scholarly discourse and gleaned data originating from CFPS 2016 and 2020.

Table 1
www.frontiersin.org

Table 1. Descriptive statistics of variables.

Statistical analysis

Descriptive statistics were undertaken to scrutinize the characteristics of the participants. This entailed the computation of means and standard deviations for continuous variables, along with an examination of the distributions pertaining to categorical variables. The comprehensive descriptive statistical analysis of all variables is presented in Table 1. Subsequently, an Ordinary Least Squares (OLS) regression model was initially employed to explore the potential influence of Internet use on the cognitive ability of rural left-behind children. Concurrently, to mitigate potential endogeneity concerns, this study adopted propensity score matching (PSM) as a methodological approach. The statistical analyses were executed using R software version 4.1.0.

Results

Descriptive analysis

Table 1 presented a comparison between individuals who used Internet and those who did not use Internet based on various covariates. Among the 1,669 participants, 828 participants used Internet. The cognitive ability scores ranged from 2 to 19.55, with a mean of 11.4 and a variance of 2.9.

Of all the respondents, there were 836 (50.1%) females and 833 (49.9%) males. The majority of participants were found to be avid readers, constituting 74.5% of the surveyed group. Additionally, a substantial proportion of participants, 70.3%, were not affiliated with demonstration schools, while 71.4% did not identify as part of the student cadre. More than half of the participants lived in west areas (54.6%).

Benchmark regression

The VIF test indicates that the mean VIF of the independent variables is 1.108, and the maximum VIF is 1.188, both well below the threshold of 10. Hence, no multicollinearity issues exist among the independent variables.

In this study, an Ordinary Least Squares (OLS) regression model is employed for research analysis. Model 1, Model 2, Model 3, and Model 4 all feature cognitive ability as the dependent variable, with Internet use serving as the independent variable. Model 1 concentrates on a sample consisting of left-behind children, while Model 2 is centered on non-left-behind children. Model 3 is based on data from the CFPS2016, and Model 4 utilizes data from the CFPS2020.

In Table 2, Model 1, Model 2, Model 3, and Model 4 collectively demonstrate a noteworthy positive correlation between Internet usage and cognitive ability. Based on Models 3 and 4, Internet use demonstrates a statistically significant and positive association with the augmentation of cognitive ability among rural left-behind children in 2020, in contrast to their counterparts in 2016.

Table 2
www.frontiersin.org

Table 2. Results of regression analysis.

In Model 1, the control variables indicate that cognitive ability of rural left-behind children show a positive association with being male, maintaining regular reading habits, enrollment in specialized classes, holding a student cadre position, having higher total family savings, and residing in central or eastern areas. Conversely, there is a significant negative correlation between sleep duration and cognitive ability, indicating that individuals with longer sleep durations tend to exhibit lower cognitive functioning. No statistically significant relationship is observed between weekly television viewing time, attendance at a demonstration school, education expenditures in the past 12 months, and cognitive ability.

Endogenous treatment: instrumental variables approach

Endogeneity concerns may arise in examining the relationship between Internet use and the cognitive ability of rural left-behind children. Primarily, certain variables with inherent difficulties in quantification may exert an impact on the cognitive ability of these children, leading to omitted variable bias and potential distortion in the regression outcomes. Additionally, there exists the possibility of reciprocal causation, where the cognitive ability of rural left-behind children may influence their Internet use, introducing a reverse causality issue and bias into the model estimates.

Addressing these challenges, an instrumental variable approach becomes imperative to mitigate endogeneity and derive the net effect of Internet use on the cognitive ability of rural left-behind children. Building upon the research framework established by Zhang and Tan (22), this study employs the “average score of importance of information channels “as an instrumental variable for Internet use. The validity of instrumental variables is contingent upon two critical conditions. Firstly, relevance is crucial, indicating a close association between the Internet development status and the Internet use of rural left-behind children. Secondly, exogeneity is essential, signifying that the average score of importance of information channels is unlikely to directly impact the cognitive ability of rural left-behind children. This ensures the fulfillment of exogeneity, a fundamental requirement for the validity of instrumental variables.

To address the endogeneity concern within the regression model, the 2SLS method is conventionally employed for scrutinizing both the endogeneity of the model and the efficacy of instrumental variables (23). This study also employs this method to assess the instrumental variables, presuming the presence of endogeneity in the model. The F-statistic for the weak instrument test is 51.57, significantly surpassing 10, signifying the effectiveness of the instrumental variable “average score of importance of information channels” (Table 3).

Table 3
www.frontiersin.org

Table 3. Endogeneity analysis results (2SLS model).

According to Table 3, the coefficient of the first-stage instrumental variable “average score of importance of information channels” is 0.150, which is significant at the 1% level, and the coefficient of the endogenous variable Internet use in the second-stage regression is 1.090. In summary, the regression results based on instrumental variables are deemed robust and effective.

Robustness analysis

To address the inherent issue of selectivity bias in social science research, this study employs the propensity score matching (PSM) method. PSM initially categorizes Internet use, seeking to minimize significant differences in characteristic variables between the matched treatment and control groups through simulated random grouping. The method divides the sample into treatment and control groups, approximating a natural experiment by re-matching and re-sampling the sample data, thereby bolstering the scientific validity of the results. The control group, composed of rural left-behind children who do not use the Internet, is matched with the treatment group, consisting of those who use the Internet, using kernel matching.

In general, a smaller standard deviation after matching is indicative of better results. If the absolute value of the standard deviation is less than 20%, the propensity score matching is considered more reliable; conversely, a higher absolute value suggests a less effective matching (24). As illustrated in Table 4, the bias of the variables significantly decreased after matching compared to before matching, with the standard deviation mostly controlled below 7%. The means of the treatment and control groups were closer after matching, and no significant difference between the two groups was observed, indicating that the sample selectivity bias was largely eliminated.

Table 4
www.frontiersin.org

Table 4. Robustness tests.

To make the test results more robust, this paper uses three methods, kernel matching, radius matching, and K-nearest neighbor matching, to estimate the average treatment effect (ATT), which is the average net effect of the effect of Internet use on the cognitive ability of rural left-behind children. The results of the mean treatment effects for the full sample propensity score matching are shown in Table 5. The matched results show that the mean treatment effects obtained by the three methods are 0.155, 0.167, and 0.207, respectively, with positive and significant coefficients, and the significance and sign of the regression coefficients obtained by the three matching methods are consistent, indicating that the influence of Internet use on the cognitive ability of rural left-behind children has a consistent and stable effect.

Table 5
www.frontiersin.org

Table 5. Average processing effects of Internet use on the cognitive ability of rural left-behind children.

Heterogeneity analysis

Heterogeneity prevails among rural left-behind children with distinct individual characteristics. This study assesses gender, age, left-behind type, demonstration school, and care about the child’s education to examine this heterogeneity, and the regression results are presented in Table 6.

Table 6
www.frontiersin.org

Table 6. Heterogeneity test of the effect of Internet use on the cognitive ability of rural left-behind children.

As shown in Table 6, regarding gender differences, Internet use exhibited a statistically significant positive association with the enhancement of cognitive ability in girls when contrasted with boys. Concerning age heterogeneity, the cognitive ability benefits linked to Internet utilization were markedly more pronounced among rural left-behind children aged 10–12 years in comparison to those aged 13–15 years. Upon categorizing rural left-behind children into distinct groups based on the parent they are left behind by, namely “left behind by father,” “left behind by mother,” and “left behind by both parents.” Notably, the cognitive ability of left behind children with absent father demonstrates the most substantial impact resulting from Internet use. In contrast, the correlation between Internet use and cognitive ability appears to be non-significant among left behind children with absent mother.

The cognitive benefits associated with Internet use were notably more pronounced among rural left-behind children, especially when considering factors such as attendance at a demonstration school and parental concern for the child’s education.

Discussion

Drawing on a sample of 1,669 rural left-behind children from the China Family Panel Studies (CFPS) in 2016 and 2020, an Ordinary Least Squares regression model was formulated. The ensuing results reveal that:

Firstly, there is a significant positive correlation between Internet use and cognitive ability among rural left-behind children. This finding aligns with the conclusions drawn by Chen and Gu (25) and Fang et al. (26). In addition, the results of the robustness test were consistent with the results of the baseline regression of this study. The robustness and credibility of the cognitive enhancement effect of Internet use on rural left-behind children have been confirmed. In 2020, Internet use exhibited a statistically significant and positive correlation with the improvement of cognitive ability among rural left-behind children, as opposed to their counterparts in 2016. This may be because the COVID-19 pandemic forced educational institutions worldwide to adapt to online learning. For rural left-behind children who might have had limited access to traditional educational resources, the shift to online learning could have expanded their access to educational materials and opportunities. Participating in online learning also demands the acquisition of digital literacy skills. The process of learning to utilize digital tools and navigate online platforms can play a crucial role in the development of cognitive skills, including problem-solving and critical thinking.

Secondly, the outcomes of the heterogeneity analysis reveal that among rural left-behind children, girls are more significantly influenced by Internet use compared to boys. This discrepancy can be ascribed to boys may dedicate more time to gaming, which might have a distinct impact on cognitive ability compared to the activities that girls typically engage in on the Internet, such as socializing and maintaining relationships (27). Within this age bracket, the cognitive enhancement impact of Internet usage is more conspicuous among left-behind children aged 10–12 years than among their counterparts aged 13–15 years. The observed variation can be attributed to the fact that children aged 10–12 years are typically in a crucial phase of cognitive development. During this period of cognitive development, the brains of children aged 10–12 exhibit heightened plasticity and responsiveness, making the younger age group more susceptible to the positive cognitive effects of interactive online activities, educational games, and informational resources on the Internet. On the other hand, adolescents aged 13–15 years may already have undergone certain cognitive developments. The impact of Internet use on cognitive ability during this stage might be influenced by factors such as school curriculum, peer interactions, and other extracurricular activities. Additionally, the older age group might have developed other cognitive skills or have access to a wider range of resources beyond the Internet, potentially diluting the observed impact.

This variation can be attributed to the circumstance that individuals aged 10–12 are in primary school, a pivotal phase for assimilating novel knowledge and experiences. The ample learning and entertainment resources on the Internet serve to compensate for the restricted real-life knowledge and resources, consequently elevating their cognitive ability. Furthermore, regarding the heterogeneity among types of left-behind children, the cognitive ability of left behind children with absent father exhibit the most significant impact resulting from Internet use. In contrast, the correlation between Internet use and cognitive ability seems to be non-significant among left behind children with absent mother, which is consistent with the findings from previous studies (28, 29). Furthermore, a mother’s parenting style significantly shapes a child’s development, with mothers often playing a central role in creating a healthy family environment, including providing essential guidelines and rules for children’s Internet use (30). This highlights the crucial role of mothers in the development and cognitive enhancement of rural left-behind children.

The cognitive benefits associated with Internet use were notably more pronounced among rural left-behind children, especially when considering factors such as attendance at a demonstration school and parental concern for the child’s education. The conclusion of the study is in accordance with the research findings of Borghans et al. (31) and Li et al. (32). Attending demonstration schools and exposes left-behind children to innovative teaching methods and educational technologies. The Internet is likely integrated into these approaches, offering students valuable exposure to modern learning tools and methodologies. Parental concern for their children’s education is a crucial factor in overseeing their proper use of the Internet. This concern translates into active supervision, ensuring that the Internet contributes positively to enhance children’s cognitive ability.

Drawing from the findings, this study puts forth the following recommendations:

1. Enhancing rural network infrastructure is crucial for bridging the urban–rural digital gap and fostering the cognitive development of left-behind children. The existing disparity in digital access between urban and rural areas is a pressing issue that requires immediate attention from relevant government entities. To address this challenge, prioritizing the improvement of physical Internet access in rural areas is paramount. This involves investing in the development of robust network facilities and digital infrastructure, ensuring that essential electronic equipment is readily available. By eliminating the connectivity issues prevalent in many rural regions, we can create a foundation for equal access to information and educational resources. Moreover, recognizing the limited literacy and proficiency in Internet use among rural residents is essential. Government initiatives should include comprehensive programs that not only focus on improving physical access but also on providing training and support for rural communities to enhance their digital literacy skills. This dual approach ensures that the benefits of improved infrastructure are maximized. In parallel, rural schools play a crucial role in shaping the skills and knowledge of the next generation. Introducing courses specifically designed to teach Internet use skills and media literacy will empower rural children to navigate the online world effectively. This educational emphasis aligns with the goal of harnessing the stimulating effect of the Internet on the cognitive development of left-behind children. However, the positive impact of the Internet on cognitive development must be balanced with efforts to counteract the potential negative consequences of exposure to undesirable online content. Implementing effective content filtering and parental control measures can help create a safer online environment for children. Additionally, parental guidance is pivotal in shaping children’s Internet habits. Parents should lead by example, demonstrating positive Internet usage behaviors and actively engaging with their children in the online space. Encouraging a shift from entertainment-focused Internet use to a more learning-oriented approach will contribute to the holistic development of left-behind children. In conclusion, a comprehensive strategy that combines infrastructure development, digital literacy programs, and parental guidance is essential for narrowing the urban–rural digital gap and promoting the cognitive development of rural left-behind children. This proactive approach recognizes the instrumental role of information technology and aims to harness its potential for the benefit of all communities.

2. Establish resource equilibrium in rural schools and incorporate the Internet into the curriculum. Numerous rural schools confront a considerable shortage of resources, especially in terms of teaching materials, including Internet resources, owing to insufficient funding. The infusion of high-quality resources not only empowers rural students with practical Internet skills but also opens up new learning horizons for teachers in remote areas. By prioritizing the provision of up-to-date teaching materials and incorporating technology into the curriculum, we can bridge the digital divide that often hampers the educational progress of students in rural settings. This proactive step goes beyond merely addressing resource shortages; it acts as a catalyst for innovation in teaching methodologies and prepares students for the demands of the digital era. Moreover, by investing in the professional development of teachers, we ensure that they are equipped with the necessary skills to leverage Internet resources effectively. Workshops, training programs, and mentorship initiatives can empower educators to incorporate digital tools seamlessly into their teaching practices, thereby enriching the learning experience for students. As a result, the entire educational ecosystem in rural areas stands to benefit, creating a positive ripple effect on the cognitive development and academic performance of left-behind children.

3. Prioritizing the well-being of left-behind children is paramount, especially in the context of the ongoing urbanization trend, which has led to a surge in the population of children left behind in rural areas. As more rural residents pursue employment opportunities in cities, a concerning information and emotional disconnect has emerged between urban and rural areas, impacting the physical and mental health of left-behind children. The absence of parental care has left these children vulnerable to delayed or unaddressed physical and mental health issues. To safeguard their well-being, it is imperative for the government to implement comprehensive health programs specifically tailored for left-behind children. These programs should encompass regular health check-ups, mental health support services, and educational initiatives that promote a holistic approach to their development. Recognizing the unique challenges faced by left-behind children, there is a need for targeted policies and interventions that address the root causes of their vulnerabilities. This includes initiatives to strengthen community support systems, engage local stakeholders, and create a nurturing environment that compensates for the lack of parental presence. Collaborative efforts between government agencies, non-profit organizations, and local communities can help establish a network of care and support for these children.

However, this study also has certain limitations: Firstly, the research relies on a specific sample derived from rural areas in China. Consequently, caution must be exercised in generalizing the results to other settings or extrapolating them to encompass all rural areas across China. The unique characteristics and contextual nuances of the chosen sample may restrict the broader applicability of the findings. Secondly, due to constraints on the availability of variables in secondary data measurement, there is a lack of specific analysis pertaining to the preferences and patterns of internet use. This absence may hinder a comprehensive understanding of the factors influencing internet use in the studied population.

Conclusion

In summary, this study, based on the China Family Panel Studies (CFPS) data from 2016 and 2020, reveals a significant positive correlation between Internet use and the cognitive ability of rural left-behind children aged 10–15. Emphasizing infrastructure development, digital literacy programs, and parental guidance can effectively narrow disparities. Additionally, establishing resource equilibrium in rural schools and prioritizing the well-being of left-behind children through targeted health programs are essential steps toward holistic development.

Data availability statement

The original contributions presented in the study are included in the article/supplementary material, further inquiries can be directed to the corresponding author.

Author contributions

A-zG: Writing – original draft, Writing – review & editing. W-cC: Writing – original draft, Writing – review & editing.

Funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This research was funded by the Key Scientific Research Project of Education Department of Hunan Province (no. 23A0062), Social Science Foundation of Changsha City (2023CSSKKT28), Hunan Natural Science Fund for Distinguished Young Scholar (2022JJ40107), and Natural Science Foundation of Changsha City (kq2202180).

Conflict of interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.

Publisher’s note

All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.

References

1. Zhong, J. P. It is urgent to improve the quality of rural family education. (2022) Available at: http://www.moe.gov.cn/jyb_xwfb/s5148/202205/t20220520_628931.html (Accessed May 5, 2022).

Google Scholar

2. Wang, CC, and Lin, JJ. Parental companionship and Children's human capital development. Educ Res. (2021) 42:104–28. Available at: https://www.cnki.com.cn/Article/CJFDTotal-JYYJ202101014.htm

Google Scholar

3. Zhou, Y, and Yang, TC. Left-behind, migration and cognitive ability of rural children: an empirical test based on survey data from CEPS. Educ Econ. (2018) 1:88–96. doi: 10.3969/j.issn.1003-4870.2018.01.016

Crossref Full Text | Google Scholar

4. Gardner, LT. The impact of after-school tutoring on Reading scores of elementary students. Minnesota: Walden University (2014).

Google Scholar

5. Attewell, P, Battle, J, and Suazo-Garcia, B. Computers and young children: social benefit or social problem? Soc Forces. (2003) 82:277–96. doi: 10.1353/sof.2003.0075

Crossref Full Text | Google Scholar

6. Fitz, NS, and Reiner, PB. Perspective: time to expand the mind. Nature. (2016) 531:S9–9. doi: 10.1038/531S9a

Crossref Full Text | Google Scholar

7. Chao, DD, Luo, SQ, Yang, XP, and Wang, WT. Effect of internet on the development of cognitive ability of urban and rural teenagers. China Educ Technol. (2018) 11:9–17. doi: 10.3969/j.issn.1006-9860.2018.11.002

Crossref Full Text | Google Scholar

8. Autor, DH. Skills, education, and the rise of earnings inequality among the “other 99 percent”. Science. (2014) 344:843–51. doi: 10.1126/science.1251868

PubMed Abstract | Crossref Full Text | Google Scholar

9. Heckman, JJ. The economics, technology, and neuroscience of human capability formation. Proc Natl Acad Sci. (2007) 104:13250–5. doi: 10.1073/pnas.0701362104

PubMed Abstract | Crossref Full Text | Google Scholar

10. Zhang, HL, Behrman, JR, Fan, CS, Wei, XD, and Zhang, JS. Does parental absence reduce cognitive achievements? Evidence from rural China. J Dev Econ. (2014) 111:181–95. doi: 10.1016/j.jdeveco.2014.09.004

Crossref Full Text | Google Scholar

11. Wu, YC, Guo, ZL, and Qi, D. Influencing effects of Family's migration experiences on Children's cognitive development among rural left-behind children-based on 2012-2019 CFPS survey. Child Study. (2021) 7:38–51. Available at: https://www.cnki.com.cn/Article/CJFDTotal-SNEY202107006.htm

Google Scholar

12. Orben, A, and Przybylski, AK. Teenage sleep and technology engagement across the week. PeerJ. (2020) 8:e8427. doi: 10.7717/peerj.8427

PubMed Abstract | Crossref Full Text | Google Scholar

13. Buchanan, AE. Cognitive enhancement and education. School Field. (2011) 9:145–62. doi: 10.1177/1477878511409623

Crossref Full Text | Google Scholar

14. Cui, Y. The analysis on post-90s Youth's characteristics of social cognition and social evaluation. Youth Stud. (2016) 4:38–46. Available at: https://www.cnki.com.cn/Article/CJFDTotal-QNYJ201604005.htm

Google Scholar

15. Clowes, RW. The cognitive integration of E-memory. Rev Philos Psychol. (2013) 4:107–33. doi: 10.1007/s13164-013-0130-y

Crossref Full Text | Google Scholar

16. Sparrow, B, and Chatman, L. Social cognition in the internet age: same as it ever was? Psychol Inq. (2013) 24:273–92. doi: 10.1080/1047840X.2013.827079

Crossref Full Text | Google Scholar

17. Sina, E, Buck, C, Ahrens, W, Coumans, JMJ, Eiben, G, Formisano, A, et al. Digital media exposure and cognitive functioning in European children and adolescents of the I. Family study. Sci Rep. (2023) 13:18855. doi: 10.1038/s41598-023-45944-0

PubMed Abstract | Crossref Full Text | Google Scholar

18. Hadlington, LJ. Cognitive failures in daily life: exploring the link with internet addiction and problematic Mobile phone use. Comput Hum Behav. (2015) 51:75–81. doi: 10.1016/j.chb.2015.04.036

Crossref Full Text | Google Scholar

19. Zhou, M, and Ding, X. Internet use, depression, and cognitive outcomes among Chinese adolescents. J Community Psychol. (2023) 51:768–87. doi: 10.1002/jcop.22779

PubMed Abstract | Crossref Full Text | Google Scholar

20. Jia, YH, and Wu, EC. Research on individual influencing factors of school bullying among left-behind children in rural areas——empirical analysis based on logistic regression. Contemp Educ Sci. (2021) 8:69–76. doi: 10.3969/j.issn.1672-2221.2021.08.011

Crossref Full Text | Google Scholar

21. Wang, XJ, and Liu, Y. The influence of internet behavior on doctor-patient trust: based on CFPS 2016. J Northwest Normal Univ. (2019) 56:119–26. doi: 10.16783/j.cnki.nwnus.2019.02.016

Crossref Full Text | Google Scholar

22. Zhang, YX, and Tan, Y. Information channels and individual entrepreneurial decisions: an empirical study based on CFPS. J Financ Econ. (2020) 11:36–43. doi: 10.19622/j.cnki.cn36-1005/f.2020.11.005

Crossref Full Text | Google Scholar

23. Chyi, H, and Mao, S. The determinants of happiness of China' s elderly population. J Happiness Stud. (2012) 13:167–85. doi: 10.1007/s10902-011-9256-8

Crossref Full Text | Google Scholar

24. Rosenbaum, PR, and Rubin, DB. Constructing a control group using multivariate matched sampling methods that incorporate the propensity score. Am Stat. (1985) 39:33–8. doi: 10.1080/00031305.1985.10479383

Crossref Full Text | Google Scholar

25. Chen, CJ, and Gu, XQ. Does the internet expand the inequality of education outcome: an empirical study based on the Programme for international student assessment. Peking Univ Educ Rev. (2017) 15:140–53. doi: 10.19355/j.cnki.1671-9468.201701009

Crossref Full Text | Google Scholar

26. Fang, C, Wang, GX, and Huang, B. Can information technology promote the development of Students' cognitive ability? Net effect estimation based on CEPS. Open Educ Res. (2019) 25:100–10. doi: 10.13966/j.cnki.kfjyyj.2019.04.011

Crossref Full Text | Google Scholar

27. Subrahmanyam, K, Kraut, RE, Greenfield, PM, and Gross, EF. The impact of home computer use on Children’s activities and development. Futur Child. (2000) 10:123–3. doi: 10.2307/1602692

Crossref Full Text | Google Scholar

28. Mathiesen, K. The internet, children, and privacy: the case against parental monitoring. Ethics Inf Technol. (2013) 15:263–74. doi: 10.1007/s10676-013-9323-4

Crossref Full Text | Google Scholar

29. Vaala, SE, and Bleakley, A. Monitoring, mediating, and modeling: parental influence on adolescent computer and internet use in the United States. J Child Media. (2015) 9:40–57. doi: 10.1080/17482798.2015.997103

Crossref Full Text | Google Scholar

30. Yang, HM, and Kim, HR. Work–family conflict on Children’s internet addiction: role of parenting styles in Korean working mother. Int J Environ Res Public Health. (2021) 18:5774. doi: 10.3390/ijerph18115774

PubMed Abstract | Crossref Full Text | Google Scholar

31. Borghans, L, Golsteyn, BHH, and Zölitz, U. School quality and the development of cognitive skills between age four and six. PLoS One. (2015) 10:e0129700. doi: 10.1371/journal.pone.0129700

PubMed Abstract | Crossref Full Text | Google Scholar

32. Li, Y, Hu, T, Ge, T, and Auden, E. The relationship between home-based parental involvement, parental educational expectation and academic performance of middle school students in mainland China: a mediation analysis of cognitive ability. Int J Educ Res. (2019) 97:139–53. doi: 10.1016/j.ijer.2019.08.003

Crossref Full Text | Google Scholar

Keywords: left-behind children, Internet use, cognitive ability, instrumental variable (IV) approach, parental migration

Citation: Gao A-z and Chen W-c (2024) The association between Internet use and cognitive ability among rural left-behind children in China. Front. Public Health. 11:1341298. doi: 10.3389/fpubh.2023.1341298

Received: 20 November 2023; Accepted: 29 December 2023;
Published: 22 January 2024.

Edited by:

Aleksandar Višnjić, University of Niš, Serbia

Reviewed by:

Lei Lu, Peking University, China
Tomoko Nishimura, Hamamatsu University School of Medicine, Japan

Copyright © 2024 Gao and Chen. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

*Correspondence: Wei-chao Chen, weichaoch@126.com

Disclaimer: All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article or claim that may be made by its manufacturer is not guaranteed or endorsed by the publisher.