Biologically plausible learning in neural networks: a lesson from bacterial chemotaxis

被引:0
|
作者
Yury P. Shimansky
机构
[1] Arizona State University,Harrington Department of Bioengineering
来源
Biological Cybernetics | 2009年 / 101卷
关键词
Learning; Neural networks; Biological optimization; Bacterial chemotaxis; Modification probability;
D O I
暂无
中图分类号
学科分类号
摘要
Learning processes in the brain are usually associated with plastic changes made to optimize the strength of connections between neurons. Although many details related to biophysical mechanisms of synaptic plasticity have been discovered, it is unclear how the concurrent performance of adaptive modifications in a huge number of spatial locations is organized to minimize a given objective function. Since direct experimental observation of even a relatively small subset of such changes is not feasible, computational modeling is an indispensable investigation tool for solving this problem. However, the conventional method of error back-propagation (EBP) employed for optimizing synaptic weights in artificial neural networks is not biologically plausible. This study based on computational experiments demonstrated that such optimization can be performed rather efficiently using the same general method that bacteria employ for moving closer to an attractant or away from a repellent. With regard to neural network optimization, this method consists of regulating the probability of an abrupt change in the direction of synaptic weight modification according to the temporal gradient of the objective function. Neural networks utilizing this method (regulation of modification probability, RMP) can be viewed as analogous to swimming in the multidimensional space of their parameters in the flow of biochemical agents carrying information about the optimality criterion. The efficiency of RMP is comparable to that of EBP, while RMP has several important advantages. Since the biological plausibility of RMP is beyond a reasonable doubt, the RMP concept provides a constructive framework for the experimental analysis of learning in natural neural networks.
引用
收藏
页码:379 / 385
页数:6
相关论文
共 50 条
  • [31] Implementation of biologically plausible spiking neural networks models on the POEtic tissue
    Moreno, JM
    Eriksson, J
    Iglesias, J
    Villa, AEP
    EVOLVABLE SYSTEMS: FROM BIOLOGY TO HARDWARE, 2005, 3637 : 188 - 197
  • [32] A Biologically Plausible Speech Recognition Framework Based on Spiking Neural Networks
    Wu, Jibin
    Chua, Yansong
    Li, Haizhou
    2018 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2018,
  • [33] Computational modeling of color perception with biologically plausible spiking neural networks
    Cohen-Duwek, Hadar
    Slovin, Hamutal
    Tsur, Elishai Ezra
    PLOS COMPUTATIONAL BIOLOGY, 2022, 18 (10)
  • [34] Biologically Plausible Complex-Valued Neural Networks and Model Optimization
    Yu, Ryan
    Wood, Andrew
    Cohen, Sarel
    Hershcovitch, Moshick
    Waddington, Daniel
    Chin, Peter
    ARTIFICIAL INTELLIGENCE APPLICATIONS AND INNOVATIONS, AIAI 2022, PART I, 2022, 646 : 369 - 382
  • [35] Biologically plausible and efficient learning
    Takahashi, H
    Uchiyama, T
    PROGRESS IN CONNECTIONIST-BASED INFORMATION SYSTEMS, VOLS 1 AND 2, 1998, : 259 - 262
  • [36] Towards Biologically Plausible Convolutional Networks
    Pogodin, Roman
    Mehta, Yash
    Lillicrap, Timothy P.
    Latham, Peter E.
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 34 (NEURIPS 2021), 2021,
  • [37] Application and development of biologically plausible neural networks in a multiagent artificial life system
    Schneider, Marvin Oliver
    Rosa, Joao Luis Garcia
    NEURAL COMPUTING & APPLICATIONS, 2009, 18 (01): : 65 - 75
  • [38] Backpropagation with biologically plausible spatiotemporal adjustment for training deep spiking neural networks
    Shen, Guobin
    Zhao, Dongcheng
    Zeng, Yi
    PATTERNS, 2022, 3 (06):
  • [39] Evolution of Biologically Plausible Neural Networks Performing a Visually Guided Reaching Task
    Asher, Derrik E.
    Krichmar, Jeffrey L.
    Oros, Nicolas
    GECCO'14: PROCEEDINGS OF THE 2014 GENETIC AND EVOLUTIONARY COMPUTATION CONFERENCE, 2014, : 145 - 152
  • [40] Application and development of biologically plausible neural networks in a multiagent artificial life system
    Marvin Oliver Schneider
    João Luís Garcia Rosa
    Neural Computing and Applications, 2009, 18 : 65 - 75