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(Seminar) Riemann-Theta Boltzmann Machine

12/12 2018
  • Title (Seminar) Riemann-Theta Boltzmann Machine
  • Speaker
  • Date
  • Venue
  • Abstract

    CAS Key Laboratory of Theoretical Physics

    Institute of Theoretical Physics

    Chinese Academy of Sciences

    Seminar

    Title

    题目

    Riemann-Theta Boltzmann Machine

    Speaker

    报告人

    Babak Haghighat

    Affiliation

    所在单位

    Tsinghua University

    Date

    日期

    2:30pm, Dec 12, 2018, Wednesday

    Venue

    地点

    Conference Room 322, ITP main building

    Abstract

    摘要

    A general Boltzmann machine with continuous visible and discrete integer valued hidden states is introduced. Under mild assumptions about the connection matrices, the probability density function of the visible units can be solved for analytically, yielding a novel parametric density function involving a ratio of Riemann-Theta functions. The conditional expectation of a hidden state for given visible states can also be calculated analytically, yielding a derivative of the logarithmic Riemann-Theta function. The conditional expectation can be used as activation function in a feedforward neural network, thereby increasing the modelling capacity of the network. Both the Boltzmann machine and the derived feedforward neural network can be successfully trained via standard gradient- and non-gradient-based optimization techniques.

    Contact Person

    所内联系人

    Hossein Yavartanoo