English

Non-linear dependences in finance

Statistical Finance 2013-09-20 v1 Data Analysis, Statistics and Probability Applications

Abstract

The thesis is composed of three parts. Part I introduces the mathematical and statistical tools that are relevant for the study of dependences, as well as statistical tests of Goodness-of-fit for empirical probability distributions. I propose two extensions of usual tests when dependence is present in the sample data and when observations have a fat-tailed distribution. The financial content of the thesis starts in Part II. I present there my studies regarding the "cross-sectional" dependences among the time series of daily stock returns, i.e. the instantaneous forces that link several stocks together and make them behave somewhat collectively rather than purely independently. A calibration of a new factor model is presented here, together with a comparison to measurements on real data. Finally, Part III investigates the temporal dependences of single time series, using the same tools and measures of correlation. I propose two contributions to the study of the origin and description of "volatility clustering": one is a generalization of the ARCH-like feedback construction where the returns are self-exciting, and the other one is a more original description of self-dependences in terms of copulas. The latter can be formulated model-free and is not specific to financial time series. In fact, I also show here how concepts like recurrences, records, aftershocks and waiting times, that characterize the dynamics in a time series can be written in the unifying framework of the copula.

Keywords

Cite

@article{arxiv.1309.5073,
  title  = {Non-linear dependences in finance},
  author = {Rémy Chicheportiche},
  journal= {arXiv preprint arXiv:1309.5073},
  year   = {2013}
}

Comments

PhD Thesis

R2 v1 2026-06-22T01:30:31.618Z