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摘要:
The binary perceptron is the simplest artificial neural network formed by N input units and one output unit,with the neural states and the synaptic weights all restricted to +1 values.The task in the teacher-student scenario is to infer the hidden weight vector by training on a set of labeled patterns.Previous efforts on the passive learning mode have shown that learning from independent random patterns is quite inefficient.Here we consider the active online learning mode in which the student designs every new Ising training pattern.We demonstrate that it is mathematically possible to achieve perfect (error-free) inference using only N designed training patterns,but this is computationally unfeasible for large systems.We then investigate two Bayesian statistical designing protocols,which require 2.3N and 1.9N training patterns,respectively,to achieve error-free inference.If the training patterns are instead designed through deductive reasoning,perfect inference is achieved using N + logaN samples.The performance gap between Bayesian and deductive designing strategies may be shortened in future work by taking into account the possibility of ergodicity breaking in the version space of the binary perceptron.
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篇名 Active Online Learning in the Binary Perceptron Problem
来源期刊 理论物理通讯(英文版) 学科
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年,卷(期) 2019,(2) 所属期刊栏目
研究方向 页码范围 243-252
页数 10页 分类号
字数 语种 英文
DOI 10.1088/0253-6102/71/2/243
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理论物理通讯(英文版)
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0253-6102
11-2592/O3
北京2735信箱
eng
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