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Finding simplicity in complexity: general principles of biological and nonbiological organization

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Abstract

What differentiates the living from the nonliving? What is life? These are perennial questions that have occupied minds since the beginning of cultures. The search for a clear demarcation between animate and inanimate is a reflection of the human tendency to create borders, not only physical but also conceptual. It is obvious that what we call a living creature, either bacteria or organism, has distinct properties from those of the normally called nonliving. However, searching beyond dichotomies and from a global, more abstract, perspective on natural laws, a clear partition of matter into animate and inanimate becomes fuzzy. Based on concepts from a variety of fields of research, the emerging notion is that common principles of biological and nonbiological organization indicate that natural phenomena arise and evolve from a central theme captured by the process of information exchange. Thus, a relatively simple universal logic that rules the evolution of natural phenomena can be unveiled from the apparent complexity of the natural world.

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The author is grateful to Professor Christopher Cherniak for reviewing the manuscript and providing advice.

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Correspondence to Jose L. Perez Velazquez.

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Perez Velazquez, J.L. Finding simplicity in complexity: general principles of biological and nonbiological organization. J Biol Phys 35, 209–221 (2009). https://doi.org/10.1007/s10867-009-9146-z

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