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A simple probabilistic neural network for machine understanding

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成果类型:
期刊论文
作者:
Xie, Rongrong;Marsili, Matteo
通讯作者:
Marsili, M
作者机构:
[Xie, Rongrong] Cent China Normal Univ CCNU, Key Lab Quark & Lepton Phys MOE, Wuhan, Peoples R China.
[Xie, Rongrong] Cent China Normal Univ CCNU, Inst Particle Phys, Wuhan, Peoples R China.
[Marsili, Matteo; Marsili, M] Abdus Salam Int Ctr Theoret Phys, Quantitat Life Sci Sect, I-34151 Trieste, Italy.
通讯机构:
[Marsili, M ] A
Abdus Salam Int Ctr Theoret Phys, Quantitat Life Sci Sect, I-34151 Trieste, Italy.
语种:
英文
关键词:
learning theory;machine learning
期刊:
Journal of Statistical Mechanics: Theory and Experiment
ISSN:
1742-5468
年:
2024
卷:
2024
期:
2
基金类别:
China Scholarship Council (CSC) [202006770018]
机构署名:
本校为第一机构
院系归属:
物理科学与技术学院
摘要:
We discuss the concept of probabilistic neural networks with a fixed internal representation being models for machine understanding. Here, 'understanding' is interpretted as the ability to map data to an already existing representation which encodes an a priori organisation of the feature space. We derive the internal representation by requiring that it satisfies the principles of maximal relevance and of maximal ignorance about how different features are combined. We show that, when hidden units are binary variables, these two principles identify a unique model-the hierarchical feature model-...

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