Data-driven effective model shows a liquid-like deep learning

被引:3
|
作者
Zou, Wenxuan [1 ]
Huang, Haiping [1 ]
机构
[1] Sun Yat Sen Univ, Sch Phys, PMI Lab, Guangzhou 510275, Peoples R China
来源
PHYSICAL REVIEW RESEARCH | 2021年 / 3卷 / 03期
基金
中国国家自然科学基金; 国家重点研发计划;
关键词
LANDSCAPE; NETWORKS;
D O I
10.1103/PhysRevResearch.3.033290
中图分类号
O4 [物理学];
学科分类号
0702 ;
摘要
The geometric structure of an optimization landscape is argued to be fundamentally important to support the success of deep neural network learning. A direct computation of the landscape beyond two layers is hard. Therefore, to capture the global view of the landscape, an interpretable model of the network-parameter (or weight) space must be established. However, the model is lacking so far. Furthermore, it remains unknown what the landscape looks like for deep networks of binary synapses, which plays a key role in robust and energy efficient neuromorphic computation. Here, we propose a statistical mechanics framework by directly building a least structured model of the high-dimensional weight space, considering realistic structured data, stochastic gradient descent training, and the computational depth of neural networks. We also consider whether the number of network parameters outnumbers the number of supplied training data, namely, over- or under-parametrization. Our least structured model reveals that the weight spaces of the under-parametrization and over-parameterization cases belong to the same class, in the sense that these weight spaces are well connected without any hierarchical clustering structure. In contrast, the shallow-network has a broken weight space, characterized by a discontinuous phase transition, thereby clarifying the benefit of depth in deep learning from the angle of high-dimensional geometry. Our effective model also reveals that inside a deep network, there exists a liquid-like central part of the architecture in the sense that the weights in this part behave as randomly as possible, providing algorithmic implications. Our data-driven model thus provides a statistical mechanics insight about why deep learning is unreasonably effective in terms of the high-dimensional weight space, and how deep networks are different from shallow ones.
引用
收藏
页数:19
相关论文
共 50 条
  • [21] Data-driven Learning for Approximation of Nonlinear Functions with Stochastic Disturbances
    Quang Minh Ta
    Huu-Thiet Nguyen
    Cheah, Chien Chern
    2020 IEEE INTERNATIONAL CONFERENCE ON INDUSTRIAL ENGINEERING AND ENGINEERING MANAGEMENT (IEEE IEEM), 2020, : 794 - 798
  • [22] Lithium-Ion Battery Remaining Useful Life Prognostics Using Data-Driven Deep Learning Algorithm
    Li, Lyu
    Song, Yuchen
    Peng, Yu
    Liu, Datong
    2018 PROGNOSTICS AND SYSTEM HEALTH MANAGEMENT CONFERENCE (PHM-CHONGQING 2018), 2018, : 1094 - 1100
  • [23] Data-Driven Modeling of Dynamic Systems Based on Online Learning
    Jiang, Zhenhua
    Beigh, Kelly
    2021 AIAA/IEEE ELECTRIC AIRCRAFT TECHNOLOGIES SYMPOSIUM (EATS), 2021,
  • [24] Data-Driven I/O Structure Learning With Contemporaneous Causality
    Costanzo, John A. W. B.
    Yagan, Osman
    IEEE TRANSACTIONS ON CONTROL OF NETWORK SYSTEMS, 2020, 7 (04): : 1929 - 1939
  • [25] An Improved Data-Driven Decision Feedback Receiver via Deep Unfolding
    Liu, Song
    Zhao, Linchang
    Song, Tao
    MATHEMATICAL PROBLEMS IN ENGINEERING, 2022, 2022
  • [26] GROUP SPARSE BAYESIAN LEARNING FOR DATA-DRIVEN DISCOVERY OF EXPLICIT MODEL FORMS WITH MULTIPLE PARAMETRIC DATASETS
    Sun, Luning
    Du, Pan
    Sun, Hao
    Wang, Jian-Xun
    NUMERICAL ALGEBRA CONTROL AND OPTIMIZATION, 2024, 14 (01): : 190 - 213
  • [27] Data-Driven Flight Control of Internet-of-Drones for Sensor Data Aggregation Using Multi-Agent Deep Reinforcement Learning
    Li, Kai
    Ni, Wei
    Emami, Yousef
    Dressler, Falko
    IEEE WIRELESS COMMUNICATIONS, 2022, 29 (04) : 18 - 23
  • [28] Data-Driven Intelligent Condition Adaptation of Feature Extraction for Bearing Fault Detection Using Deep Responsible Active Learning
    Mahesh, T. R.
    Chandrasekaran, Saravanan
    Ram, V. Ashwin
    Kumar, V. Vinoth
    Vivek, V.
    Guluwadi, Suresh
    IEEE ACCESS, 2024, 12 : 45381 - 45397
  • [29] Data-Driven Extraction of a Nested Model of Human Brain Function
    Bolt, Taylor
    Nomi, Jason S.
    Yeo, B. T. Thomas
    Uddin, Lucina Q.
    JOURNAL OF NEUROSCIENCE, 2017, 37 (30) : 7263 - 7277
  • [30] Data-driven soliton mappings for integrable fractional nonlinear wave equations via deep learning with Fourier neural operator
    Zhong, Ming
    Yan, Zhenya
    CHAOS SOLITONS & FRACTALS, 2022, 165