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Undergraduate Paper Session

‟Change Point Detection for Skew-t Structural Changes through Modified Energy Distance Approach” by Ryan Avallone <rgavallon@coastal.edu>, Coastal Carolina University (Accepted)
Coauthors:

Abstract:

In this report, we investigate a two-sample procedure for detecting distributional changes in stock returns using a modified energy statistic (EMIC) proposed by Njuki and Ning [2025]. The method compares two adjacent segments of a time series to assess whether they originate from the same underlying distribution. The finite sample properties of the proposed method are conducted to compare its powers and applications. Since the energy-based tests are sensitive to differences in location, scale, skewness, and tail behavior, the proposed approach on modified energy statistics provides a flexible nonparametric framework for identifying potential change-points in financial return data

Scheduled for: 2026-03-28 10:20 AM: Undergraduate Paper Session #5.2 in Computing and Math 325