Literature DB >> 27683554

Toward an Integration of Deep Learning and Neuroscience.

Adam H Marblestone1, Greg Wayne2, Konrad P Kording3.   

Abstract

Neuroscience has focused on the detailed implementation of computation, studying neural codes, dynamics and circuits. In machine learning, however, artificial neural networks tend to eschew precisely designed codes, dynamics or circuits in favor of brute force optimization of a cost function, often using simple and relatively uniform initial architectures. Two recent developments have emerged within machine learning that create an opportunity to connect these seemingly divergent perspectives. First, structured architectures are used, including dedicated systems for attention, recursion and various forms of short- and long-term memory storage. Second, cost functions and training procedures have become more complex and are varied across layers and over time. Here we think about the brain in terms of these ideas. We hypothesize that (1) the brain optimizes cost functions, (2) the cost functions are diverse and differ across brain locations and over development, and (3) optimization operates within a pre-structured architecture matched to the computational problems posed by behavior. In support of these hypotheses, we argue that a range of implementations of credit assignment through multiple layers of neurons are compatible with our current knowledge of neural circuitry, and that the brain's specialized systems can be interpreted as enabling efficient optimization for specific problem classes. Such a heterogeneously optimized system, enabled by a series of interacting cost functions, serves to make learning data-efficient and precisely targeted to the needs of the organism. We suggest directions by which neuroscience could seek to refine and test these hypotheses.

Entities:  

Keywords:  cognitive architecture; cost functions; neural networks; neuroscience

Year:  2016        PMID: 27683554      PMCID: PMC5021692          DOI: 10.3389/fncom.2016.00094

Source DB:  PubMed          Journal:  Front Comput Neurosci        ISSN: 1662-5188            Impact factor:   2.380


  292 in total

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  89 in total

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6.  Deep(er) Learning.

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Review 8.  Direct Fit to Nature: An Evolutionary Perspective on Biological and Artificial Neural Networks.

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9.  Towards deep learning with segregated dendrites.

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Review 10.  Quantifying behavior to solve sensorimotor transformations: advances from worms and flies.

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