Neural Network Identifiability for a Family of Sigmoidal Nonlinearities

被引:5
|
作者
Vlacic, Verner [1 ]
Bolcskei, Helmut [1 ]
机构
[1] Swiss Fed Inst Technol, Chair Math Informat Sci, Zurich, Switzerland
关键词
Deep neural networks; Identifiability; Sigmoidal nonlinearities; OPTIMAL APPROXIMATION;
D O I
10.1007/s00365-021-09544-3
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
This paper addresses the following question of neural network identifiability: Does the input-output map realized by a feed-forward neural network with respect to a given nonlinearity uniquely specify the network architecture, weights, and biases? The existing literature on the subject (Sussman in Neural Netw 5(4):589-593, 1992; Albertini et al. in Artificial neural networks for speech and vision, 1993; Fefferman in Rev Mat Iberoam 10(3):507-555, 1994) suggests that the answer should be yes, up to certain symmetries induced by the nonlinearity, and provided that the networks under consideration satisfy certain "genericity conditions." The results in Sussman (1992) and Albertini et al. (1993) apply to networks with a single hidden layer and in Fefferman (1994) the networks need to be fully connected. In an effort to answer the identifiability question in greater generality, we derive necessary genericity conditions for the identifiability of neural networks of arbitrary depth and connectivity with an arbitrary nonlinearity. Moreover, we construct a family of nonlinearities for which these genericity conditions are minimal, i.e., both necessary and sufficient. This family is large enough to approximate many commonly encountered nonlinearities to within arbitrary precision in the uniform norm.
引用
收藏
页码:173 / 224
页数:52
相关论文
共 50 条
  • [1] Neural Network Identifiability for a Family of Sigmoidal Nonlinearities
    Verner Vlačić
    Helmut Bölcskei
    Constructive Approximation, 2022, 55 : 173 - 224
  • [2] Inhibitory synapses in neural networks with sigmoidal nonlinearities
    Palmieri, F
    Catello, C
    D'Orio, G
    IEEE TRANSACTIONS ON NEURAL NETWORKS, 1999, 10 (03): : 635 - 644
  • [4] Multivariate sigmoidal neural network approximation
    Anastassiou, George A.
    NEURAL NETWORKS, 2011, 24 (04) : 378 - 386
  • [5] Univariate sigmoidal neural network approximation
    Anastassiou, George A.
    JOURNAL OF COMPUTATIONAL ANALYSIS AND APPLICATIONS, 2012, 14 (04) : 659 - 690
  • [6] Automated Design of Linear Bounding Functions for Sigmoidal Nonlinearities in Neural Networks
    Konig, Matthias
    Zhang, Xiyue
    Hoos, Holger H.
    Kwiatkowska, Marta
    van Rijn, Jan N.
    MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES: RESEARCH TRACK, PT VII, ECML PKDD 2024, 2024, 14947 : 383 - 398
  • [7] Affine symmetries and neural network identifiability
    Vlacic, Verner
    Boelcskei, Helmut
    ADVANCES IN MATHEMATICS, 2021, 376
  • [8] An embedded sigmoidal neural network for modeling of nonlinear systems
    Hu, JL
    Hirasawa, K
    IJCNN'01: INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, VOLS 1-4, PROCEEDINGS, 2001, : 1698 - 1703
  • [9] A Neural Network Approximation Based on a Parametric Sigmoidal Function
    Yun, Beong In
    MATHEMATICS, 2019, 7 (03):
  • [10] Multivariate neural network operators with sigmoidal activation functions
    Costarelli, Danilo
    Spigler, Renato
    NEURAL NETWORKS, 2013, 48 : 72 - 77