English

Compression-based methods for nonparametric density estimation, on-line prediction, regression and classification for time series

Information Theory 2007-11-01 v2 math.IT

Abstract

We address the problem of nonparametric estimation of characteristics for stationary and ergodic time series. We consider finite-alphabet time series and real-valued ones and the following four problems: i) estimation of the (limiting) probability (or estimation of the density for real-valued time series), ii) on-line prediction, iii) regression and iv) classification (or so-called problems with side information). We show that so-called archivers (or data compressors) can be used as a tool for solving these problems. In particular, firstly, it is proven that any so-called universal code (or universal data compressor) can be used as a basis for constructing asymptotically optimal methods for the above problems. (By definition, a universal code can "compress" any sequence generated by a stationary and ergodic source asymptotically till the Shannon entropy of the source.) And, secondly, we show experimentally that estimates, which are based on practically used methods of data compression, have a reasonable precision.

Keywords

Cite

@article{arxiv.cs/0701036,
  title  = {Compression-based methods for nonparametric density estimation, on-line prediction, regression and classification for time series},
  author = {Boris Ryabko},
  journal= {arXiv preprint arXiv:cs/0701036},
  year   = {2007}
}