Unraveling S&P500 stock volatility and networks -- An encoding-and-decoding approach
Xiaodong Wang, Fushing Hsieh

TL;DR
This paper introduces a non-parametric encoding-and-decoding method to identify multiple volatility states in stock return time series, revealing dependencies among S&P500 stocks through their volatility dynamics.
Contribution
The paper presents a novel encoding-and-decoding approach for detecting volatility regimes without assuming specific dynamic models or distributions.
Findings
Successfully identifies multiple volatility states in S&P500 stocks.
Outperforms parametric models like Hidden Markov Model in experiments.
Constructs a stock network based on concurrent volatility states.
Abstract
Volatility of financial stock is referring to the degree of uncertainty or risk embedded within a stock's dynamics. Such risk has been received huge amounts of attention from diverse financial researchers. By following the concept of regime-switching model, we proposed a non-parametric approach, named encoding-and-decoding, to discover multiple volatility states embedded within a discrete time series of stock returns. The encoding is performed across the entire span of temporal time points for relatively extreme events with respect to a chosen quantile-based threshold. As such the return time series is transformed into Bernoulli-variable processes. In the decoding phase, we computationally seek for locations of change points via estimations based on a new searching algorithm in conjunction with the information criterion applied on the observed collection of recurrence times upon the…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Time Series Analysis and Forecasting · Stock Market Forecasting Methods
