Industry Classification Using a Novel Financial Time-Series Case Representation
Abstract
The financial domain has proven to be a fertile source of challenging machine learning problems across a variety of tasks including prediction, clustering, and classification. Researchers can access an abundance of time-series data and even modest performance improvements can be translated into significant additional value. In this work, we consider the use of case-based reasoning for an important task in this domain, by using historical stock returns time-series data for industry sector classification. We discuss why time-series data can present some significant representational challenges for conventional case-based reasoning approaches, and in response, we propose a novel representation based on stock returns embeddings, which can be readily calculated from raw stock returns data. We argue that this representation is well suited to case-based reasoning and evaluate our approach using a large-scale public dataset for the industry sector classification task, demonstrating substantial performance improvements over several baselines using more conventional representations.
Cite
@article{arxiv.2305.00245,
title = {Industry Classification Using a Novel Financial Time-Series Case Representation},
author = {Rian Dolphin and Barry Smyth and Ruihai Dong},
journal= {arXiv preprint arXiv:2305.00245},
year = {2023}
}
Comments
15 pages