Unsupervised model-free representation learning

04/17/2013
by   Daniil Ryabko, et al.
0

Numerous control and learning problems face the situation where sequences of high-dimensional highly dependent data are available, but no or little feedback is provided to the learner. To address this issue, we formulate the following problem. Given a series of observations X_0,...,X_n coming from a large (high-dimensional) space X, find a representation function f mapping X to a finite space Y such that the series f(X_0),...,f(X_n) preserve as much information as possible about the original time-series dependence in X_0,...,X_n. We show that, for stationary time series, the function f can be selected as the one maximizing the time-series information h_0(f(X))- h_∞ (f(X)) where h_0(f(X)) is the Shannon entropy of f(X_0) and h_∞ (f(X)) is the entropy rate of the time series f(X_0),...,f(X_n),... Implications for the problem of optimal control are presented.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/27/2023

High Dimensional Time Series Regression Models: Applications to Statistical Learning Methods

These lecture notes provide an overview of existing methodologies and re...
research
06/01/2023

Learning Gaussian Mixture Representations for Tensor Time Series Forecasting

Tensor time series (TTS) data, a generalization of one-dimensional time ...
research
12/03/2021

Combining Embeddings and Fuzzy Time Series for High-Dimensional Time Series Forecasting in Internet of Energy Applications

The prediction of residential power usage is essential in assisting a sm...
research
07/20/2021

High-dimensional Multivariate Time Series Forecasting in IoT Applications using Embedding Non-stationary Fuzzy Time Series

In Internet of things (IoT), data is continuously recorded from differen...
research
02/18/2019

Large-scale directed network inference with multivariate transfer entropy and hierarchical statistical testing

Network inference algorithms are valuable tools for the study of large-s...
research
10/03/2019

Variational PSOM: Deep Probabilistic Clustering with Self-Organizing Maps

Generating visualizations and interpretations from high-dimensional data...

Please sign up or login with your details

Forgot password? Click here to reset