Comparing feedforward and recurrent neural network architectures with human behavior in artificial grammar learning

被引:0
作者
Andrea Alamia
Victor Gauducheau
Dimitri Paisios
Rufin VanRullen
机构
[1] CerCo,Laboratoire Cognition, Langues, Langage, Ergonomie
[2] CNRS,undefined
[3] CNRS,undefined
[4] Université Toulouse,undefined
[5] ANITI,undefined
[6] Université de Toulouse,undefined
来源
Scientific Reports | / 10卷
关键词
D O I
暂无
中图分类号
学科分类号
摘要
In recent years artificial neural networks achieved performance close to or better than humans in several domains: tasks that were previously human prerogatives, such as language processing, have witnessed remarkable improvements in state of the art models. One advantage of this technological boost is to facilitate comparison between different neural networks and human performance, in order to deepen our understanding of human cognition. Here, we investigate which neural network architecture (feedforward vs. recurrent) matches human behavior in artificial grammar learning, a crucial aspect of language acquisition. Prior experimental studies proved that artificial grammars can be learnt by human subjects after little exposure and often without explicit knowledge of the underlying rules. We tested four grammars with different complexity levels both in humans and in feedforward and recurrent networks. Our results show that both architectures can “learn” (via error back-propagation) the grammars after the same number of training sequences as humans do, but recurrent networks perform closer to humans than feedforward ones, irrespective of the grammar complexity level. Moreover, similar to visual processing, in which feedforward and recurrent architectures have been related to unconscious and conscious processes, the difference in performance between architectures over ten regular grammars shows that simpler and more explicit grammars are better learnt by recurrent architectures, supporting the hypothesis that explicit learning is best modeled by recurrent networks, whereas feedforward networks supposedly capture the dynamics involved in implicit learning.
引用
收藏
相关论文
共 50 条
[41]   Constructive Neural Network Algorithms for Feedforward Architectures Suitable for Classification Tasks [J].
Nicoletti, Maria do Carmo ;
Bertini, Joao R., Jr. ;
Elizondo, David ;
Franco, Leonardo ;
Jerez, Jose M. .
CONSTRUCTIVE NEURAL NETWORKS, 2009, 258 :1-+
[42]   Gradual learning for behavior acquisition by evolving artificial neural network [J].
Ooe, Ryosuke ;
Kawakami, Takashi .
ARTIFICIAL LIFE AND ROBOTICS, 2016, 21 (04) :399-404
[43]   COMPARING HUMAN AND NEURAL-NETWORK LEARNING OF CLIMATE CATEGORIES [J].
LLOYD, R ;
CARBONE, G .
PROFESSIONAL GEOGRAPHER, 1995, 47 (03) :237-250
[44]   Investigation of Recurrent-Neural-Network Architectures and Learning Methods for Spoken Language Understanding [J].
Mesnil, Gregoire ;
He, Xiaodong ;
Deng, Li ;
Bengio, Yoshua .
14TH ANNUAL CONFERENCE OF THE INTERNATIONAL SPEECH COMMUNICATION ASSOCIATION (INTERSPEECH 2013), VOLS 1-5, 2013, :3738-3742
[45]   Multimodule artificial neural network architectures for autonomous robot control through behavior modulation [J].
Becerra, JA ;
Santos, J ;
Duro, RJ .
ARTIFICIAL NEURAL NETS PROBLEM SOLVING METHODS, PT II, 2003, 2687 :169-176
[46]   Encoding Time in Feedforward Trajectories of a Recurrent Neural Network Model [J].
Hardy, N. F. ;
Buonomano, Dean V. .
NEURAL COMPUTATION, 2018, 30 (02) :378-396
[47]   A Comparison of Adaptation Techniques and Recurrent Neural Network Architectures [J].
Vanek, Jan ;
Michalek, Josef ;
Zelinka, Jan ;
Psutka, Josef .
STATISTICAL LANGUAGE AND SPEECH PROCESSING, SLSP 2018, 2018, 11171 :79-90
[48]   Statistical Online Learning in Recurrent and Feedforward Quantum Neural Networks [J].
Zuev, S. V. .
DOKLADY MATHEMATICS, 2023, 108 (SUPPL 2) :S317-S324
[49]   A feedforward control system of PMSM based on artificial neural network [J].
Wan, WB ;
Zhang, XD ;
Xu, JQ ;
Tang, RY .
ICEMS'2001: PROCEEDINGS OF THE FIFTH INTERNATIONAL CONFERENCE ON ELECTRICAL MACHINES AND SYSTEMS, VOLS I AND II, 2001, :679-682
[50]   Optimizing the number of hidden nodes of a feedforward artificial neural network [J].
Fletcher, L ;
Katkovnik, V ;
Steffens, FE ;
Engelbrecht, AP .
IEEE WORLD CONGRESS ON COMPUTATIONAL INTELLIGENCE, 1998, :1608-1612