Learning from multivariate discrete sequential data using a restricted Boltzmann machine model


Abstract:

A restricted Boltzmann machine (RBM) is a generative neural-network model with many novel applications such as collaborative filtering and acoustic modeling. An RBM lacks the capacity to retain memory, making it inappropriate for dynamic data modeling as in time-series analysis. In this paper we address this issue by proposing the p-RBM model, a generalization of the regular RBM model, capable of retaining memory of p past states. We further show how to train the p-RBM model using contrastive divergence and test our model on the problem of pbkp_redicting the stock market direction considering 100 stocks of the NASDAQ-100 index. Obtained results show that the p-RBM offer promising pbkp_rediction potential.

Año de publicación:

2018

Keywords:

  • TIME SERIES
  • Restricted Boltzmann machines
  • Neural networks
  • Sequential data
  • stock market pbkp_rediction

Fuente:

scopusscopus
googlegoogle

Tipo de documento:

Conference Object

Estado:

Acceso restringido

Áreas de conocimiento:

  • Aprendizaje automático

Áreas temáticas:

  • Programación informática, programas, datos, seguridad