Entropic Dynamic Time Warping Kernels for Co-evolving Financial Time Series Analysis
Lu Bai, Lixin Cui, Lixiang Xu, Yue Wang, Zhihong Zhang, Edwin R., Hancock

TL;DR
This paper introduces a novel kernel-based similarity measure for dynamic financial networks using entropy and dynamic time warping, enabling better analysis of structural evolution in stock market data.
Contribution
It proposes a new entropy-based dynamic time warping kernel for comparing evolving financial networks, linking graph kernels with classical DTW methods.
Findings
Effective in capturing network evolution
Positive definite kernel for graph similarity
Demonstrated on NYSE data
Abstract
In this work, we develop a novel framework to measure the similarity between dynamic financial networks, i.e., time-varying financial networks. Particularly, we explore whether the proposed similarity measure can be employed to understand the structural evolution of the financial networks with time. For a set of time-varying financial networks with each vertex representing the individual time series of a different stock and each edge between a pair of time series representing the absolute value of their Pearson correlation, our start point is to compute the commute time matrix associated with the weighted adjacency matrix of the network structures, where each element of the matrix can be seen as the enhanced correlation value between pairwise stocks. For each network, we show how the commute time matrix allows us to identify a reliable set of dominant correlated time series as well as…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Time Series Analysis and Forecasting
