Enriching behavioral ecology with reinforcement learning methods

[1]  J. Krebs,et al.  Foraging Theory , 2019 .

[2]  Syed Naveed Hussain Shah,et al.  The Evolution of Reinforcement Learning * , 2019, 2019 IEEE Symposium Series on Computational Intelligence (SSCI).

[3]  W. Frankenhuis,et al.  Bridging Evolutionary Biology and Developmental Psychology: Toward An Enduring Theoretical Infrastructure. , 2018, Child development.

[4]  Demis Hassabis,et al.  Mastering the game of Go without human knowledge , 2017, Nature.

[5]  W. Frankenhuis,et al.  What Do Evolutionary Models Teach Us About Sensitive Periods in Psychological Development , 2017 .

[6]  P. Smaldino Models Are Stupid, and We Need More of Them , 2017 .

[7]  S. Dridi,et al.  Learning to cooperate: The evolution of social rewards in repeated interactions , 2016, bioRxiv.

[8]  D. Stephens,et al.  Reliability, uncertainty, and costs in the evolution of animal learning , 2016, Current Opinion in Behavioral Sciences.

[9]  Sasha R. X. Dall,et al.  Detection vs. selection: integration of genetic, epigenetic and environmental cues in fluctuating environments. , 2016, Ecology letters.

[10]  Magnus Enquist,et al.  The power of associative learning and the ontogeny of optimal behaviour , 2016, Royal Society Open Science.

[11]  W. Frankenhuis,et al.  Bayesian Models of Development. , 2016, Trends in ecology & evolution.

[12]  Pierre-Yves Oudeyer,et al.  How Evolution May Work Through Curiosity-Driven Developmental Process , 2016, Top. Cogn. Sci..

[13]  Pete C. Trimmer,et al.  Adaptive Use of Information during Growth Can Explain Long-Term Effects of Early Life Experiences , 2016, The American Naturalist.

[14]  Eörs Szathmáry,et al.  How Can Evolution Learn? , 2016, Trends in ecology & evolution.

[15]  Demis Hassabis,et al.  Mastering the game of Go with deep neural networks and tree search , 2016, Nature.

[16]  W. Frankenhuis,et al.  The evolution of sensitive periods in a model of incremental development , 2016, Proceedings of the Royal Society B: Biological Sciences.

[17]  S. Dridi,et al.  Environmental complexity favors the evolution of learning , 2015, bioRxiv.

[18]  Ferdinand Pfab,et al.  Reversible phenotypic plasticity with continuous adaptation , 2014, Journal of mathematical biology.

[19]  W. Frankenhuis,et al.  Adaptive explanations for sensitive windows in development , 2015, Frontiers in Zoology.

[20]  T. Uller,et al.  When is incomplete epigenetic resetting in germ cells favoured by natural selection? , 2015, Proceedings of the Royal Society B: Biological Sciences.

[21]  Sasha R. X. Dall,et al.  Genes as cues: phenotypic integration of genetic and epigenetic information from a Darwinian perspective. , 2015, Trends in ecology & evolution.

[22]  S. Dridi,et al.  A model for the evolution of reinforcement learning in fluctuating games , 2015, Animal Behaviour.

[23]  K. Laland,et al.  The learning of action sequences through social transmission , 2015, Animal Cognition.

[24]  Marc Mangel,et al.  Stochastic Dynamic Programming Illuminates the Link Between Environment, Physiology, and Evolution , 2015, Bulletin of mathematical biology.

[25]  H. Barrett The Shape of Thought: How Mental Adaptations Evolve , 2015 .

[26]  F. Weissing,et al.  Evolutionary tipping points in the capacity to adapt to environmental change , 2014, Proceedings of the National Academy of Sciences.

[27]  Alasdair I Houston,et al.  An Evolutionary Perspective on Information Processing , 2014, Top. Cogn. Sci..

[28]  Pete C. Trimmer,et al.  The evolution of decision rules in complex environments , 2014, Trends in Cognitive Sciences.

[29]  S. Dridi,et al.  On learning dynamics underlying the evolution of learning rules. , 2014, Theoretical population biology.

[30]  A. Grafen The formal darwinism project in outline , 2014 .

[31]  O. Wolkenhauer Why model? , 2013, Front. Physiol..

[32]  S. Leibler,et al.  A model for the generation and transmission of variations in evolution , 2013, Proceedings of the National Academy of Sciences.

[33]  Barbara Fischer,et al.  The Evolution of Age-Dependent Plasticity , 2013, The American Naturalist.

[34]  W. Frankenhuis,et al.  The evolution of predictive adaptive responses in human life history , 2013, Proceedings of the Royal Society B: Biological Sciences.

[35]  W. Frankenhuis,et al.  Bridging developmental systems theory and evolutionary psychology using dynamic optimization. , 2013, Developmental science.

[36]  L. Cosmides,et al.  Evolutionary psychology: new perspectives on cognition and motivation. , 2013, Annual review of psychology.

[37]  Andrew G. Barto,et al.  Intrinsic Motivation and Reinforcement Learning , 2013, Intrinsically Motivated Learning in Natural and Artificial Systems.

[38]  L. Giraldeau,et al.  Exposing the behavioral gambit: the evolution of learning and decision rules , 2013 .

[39]  Jeffrey R. Stevens,et al.  Evolution and the mechanisms of decision making , 2012 .

[40]  J. Starrfelt,et al.  Bet‐hedging—a triple trade‐off between means, variances and correlations , 2012, Biological reviews of the Cambridge Philosophical Society.

[41]  E. Snell-Rood,et al.  Selective processes in development: implications for the costs and benefits of phenotypic plasticity. , 2012, Integrative and comparative biology.

[42]  James A. R. Marshall,et al.  Does natural selection favour the Rescorla-Wagner rule? , 2012, Journal of theoretical biology.

[43]  W. Frankenhuis,et al.  Balancing sampling and specialization: an adaptationist model of incremental development , 2011, Proceedings of the Royal Society B: Biological Sciences.

[44]  Warren B. Powell,et al.  “Approximate dynamic programming: Solving the curses of dimensionality” by Warren B. Powell , 2007, Wiley Series in Probability and Statistics.

[45]  James A. R. Marshall,et al.  Decision-making under uncertainty: biases and Bayesians , 2011, Animal Cognition.

[46]  M. Mameli,et al.  An evaluation of the concept of innateness , 2011, Philosophical Transactions of the Royal Society B: Biological Sciences.

[47]  Satinder Singh Baveja,et al.  The Optimal Reward Problem: Designing Effective Reward for Bounded Agents , 2011 .

[48]  P. Schrimpf,et al.  Dynamic Programming , 2011 .

[49]  K. Brčić-Kostić Quantitative Genetics and Evolution , 2010 .

[50]  Richard L. Lewis,et al.  Intrinsically Motivated Reinforcement Learning: An Evolutionary Perspective , 2010, IEEE Transactions on Autonomous Mental Development.

[51]  A. Gardner Adaptation as organism design , 2009, Biology Letters.

[52]  A. Houston,et al.  Integrating function and mechanism. , 2009, Trends in ecology & evolution.

[53]  Michael L. Littman,et al.  A tutorial on partially observable Markov decision processes , 2009 .

[54]  Dimitri P. Bertsekas,et al.  Neuro-Dynamic Programming , 2009, Encyclopedia of Optimization.

[55]  Richard L. Lewis,et al.  Where Do Rewards Come From , 2009 .

[56]  J. Kruschke Bayesian approaches to associative learning: From passive to active learning , 2008, Learning & behavior.

[57]  Carl T. Bergstrom,et al.  Phenotypic diversity as an adaptation to environmental uncertainty , 2008 .

[58]  A. Houston,et al.  John Maynard Smith and the importance of consistency in evolutionary game theory , 2006 .

[59]  Jeroen M. Swinkels,et al.  Information, evolution and utility , 2006 .

[60]  O. Leimar,et al.  A New Perspective on Developmental Plasticity and the Principles of Adaptive Morph Determination , 2006, The American Naturalist.

[61]  Richard S. Sutton,et al.  Reinforcement Learning: An Introduction , 1998, IEEE Trans. Neural Networks.

[62]  Jamie Peck,et al.  Cycles of contingency , 2004 .

[63]  R. Samuels Innateness in cognitive science , 2004, Trends in Cognitive Sciences.

[64]  M. West-Eberhard Developmental plasticity and evolution , 2003 .

[65]  Sridhar Mahadevan,et al.  Recent Advances in Hierarchical Reinforcement Learning , 2003, Discret. Event Dyn. Syst..

[66]  S. Sultan,et al.  Metapopulation Structure Favors Plasticity over Local Adaptation , 2002, The American Naturalist.

[67]  Isaac Meilijson,et al.  Evolution of Reinforcement Learning in Uncertain Environments: A Simple Explanation for Complex Foraging Behaviors , 2002, Adapt. Behav..

[68]  Raymond J. O'Connor,et al.  Models of Adaptive Behaviour: An Approach Based on State. , 2001 .

[69]  M. Feldman,et al.  Cultural niche construction and human evolution , 2001, Journal of evolutionary biology.

[70]  R. Gray,et al.  Cycles of Contingency: Developmental Systems and Evolution , 2001 .

[71]  C. Clark,et al.  Dynamic State Variable Models in Ecology , 2000 .

[72]  A. Agrawal,et al.  Transgenerational induction of defences in animals and plants , 1999, Nature.

[73]  E. Shimizu,et al.  Transgenerational induction of defences in animals and plants , 1999 .

[74]  M. Pigliucci,et al.  Phenotypic Evolution: A Reaction Norm Perspective , 1998 .

[75]  A. Kacelnik,et al.  Risk-sensitivity: crossroads for theories of decision-making , 1997, Trends in Cognitive Sciences.

[76]  S. Frank The design of adaptive systems: optimal parameters for variation and selection in learning and development. , 1997, Journal of theoretical biology.

[77]  M. Lachmann,et al.  The inheritance of phenotypes: an adaptation to fluctuating environments. , 1996, Journal of theoretical biology.

[78]  P. Hammerstein Darwinian adaptation, population genetics and the streetcar theory of evolution , 1996, Journal of mathematical biology.

[79]  F. Sá The Design of Adaptive Systems: Optimal Parameters for Variation and Selection in Learning and Development , 1996 .

[80]  Steven A. Frank,et al.  The Design of Natural and Artificial Adaptive Systems , 1996 .

[81]  J. Hofbauer,et al.  The adaptive advantage of phenotypic memory in changing environments. , 1995, Philosophical transactions of the Royal Society of London. Series B, Biological sciences.

[82]  Jeffrey L. Elman,et al.  Learning and Evolution in Neural Networks , 1994, Adapt. Behav..

[83]  Gerald Tesauro,et al.  TD-Gammon, a Self-Teaching Backgammon Program, Achieves Master-Level Play , 1994, Neural Computation.

[84]  N. Moran The Evolutionary Maintenance of Alternative Phenotypes , 1992, The American Naturalist.

[85]  M. Kirkpatrick,et al.  QUANTITATIVE GENETICS AND THE EVOLUTION OF REACTION NORMS , 1992, Evolution; international journal of organic evolution.

[86]  Michael F. Antolini I. REACTION NORMS , 1992 .

[87]  J. M. Smith,et al.  Optimality theory in evolutionary biology , 1990, Nature.

[88]  M. Mangel Dynamic information in uncertain and changing worlds. , 1990, Journal of theoretical biology.

[89]  C. Clark,et al.  Dynamic Modeling in Behavioral Ecology , 2019 .

[90]  Marc Mangel,et al.  Dynamic models in behavioural and evolutionary ecology , 1988, Nature.

[91]  Geoffrey E. Hinton,et al.  How Learning Can Guide Evolution , 1996, Complex Syst..

[92]  A. Houston,et al.  The Common Currency for Behavioral Decisions , 1986, The American Naturalist.

[93]  Joe C. Campbell,et al.  Developmental Constraints and Evolution: A Perspective from the Mountain Lake Conference on Development and Evolution , 1985, The Quarterly Review of Biology.

[94]  A. Grafen Natural selection, kin selection and group selection [Polistes fuscatus, wasps] , 1984 .

[95]  L. Dill Adaptive Flexibility in the Foraging Behavior of Fishes , 1983 .

[96]  E. Mayr How to Carry Out the Adaptationist Program? , 1983, The American Naturalist.

[97]  J. Staddon Adaptive behavior and learning , 1983 .

[98]  A Houston,et al.  The application of statistical decision theory to animal behaviour. , 1980, Journal of theoretical biology.

[99]  J. M. Smith,et al.  Optimization Theory in Evolution , 1978 .

[100]  P. Taylor,et al.  Test of optimal sampling by foraging great tits , 1978 .

[101]  S. J. Arnold The Evolution of a Special Class of Modifiable Behaviors in Relation to Environmental Pattern , 1978, The American Naturalist.

[102]  G. Box Science and Statistics , 1976 .

[103]  R. Lewontin,et al.  On population growth in a randomly varying environment. , 1969, Proceedings of the National Academy of Sciences of the United States of America.

[104]  R. Bellman Dynamic Programming , 1957, Science.

[105]  R. Levins The strategy of model building in population biology , 1966 .

[106]  B. Skinner,et al.  Science and human behavior , 1953 .

[107]  W. Brown Animal Intelligence: Experimental Studies , 1912, Nature.

[108]  J. Baldwin A New Factor in Evolution , 1896, The American Naturalist.