Explainable machine learning for high frequency trading dynamics discovery

被引:0
|
作者
Han, Henry [1 ]
Forrest, Jeffrey Yi-Lin [2 ]
Wang, Jiacun [3 ]
Yuan, Shuining [4 ]
Han, Fei [5 ]
Li, Diane [6 ]
机构
[1] Baylor Univ, Sch Engn & Comp Sci, Dept Comp Sci, Waco, TX 76798 USA
[2] Slippery Rock Univ, Dept Accounting Econ & Finance, Slippery Rock, PA 16057 USA
[3] Monmouth Univ, Dept Comp Sci & Software Engn, W Long Branch, NJ 07764 USA
[4] Fordham Univ, Gabelli Sch Business, Quantitat Finance, New York, NY 10023 USA
[5] Jiangsu Univ, Coll Comp Sci, Zhenjiang 212013, Jiangsu, Peoples R China
[6] Univ Maryland, Dept Business Management & Accounting, Baltimore, MD 21853 USA
关键词
Explainable AI; High-frequency trading; Trading dynamics; Feature interpolation;
D O I
10.1016/j.ins.2024.121286
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
High-frequency trading (HFT) plays an essential role in the financial market. However, discovering and revealing trading dynamics remains a challenge in Fintech. In this study, we propose a novel explainable machine learning approach: Feature-Interpolation-based Dimension Reduction SCAN (FIDR-SCAN) to address the challenge by creating a trading map. The trading map deciphers an HFT security's trading dynamics by marking the status of each transaction, grouping transactions in clusters, and identifying the trading markers. The proposed method presents new feature interpolation techniques to build a more informative and explainable feature space, unveiling hidden trading behaviors. It mines HFT data in their low-dimensional embedding to seek exceptional trading markers and classify the statuses of transactions. We validate the meaningfulness and effectiveness of the trading markers discovered by FIDR-SCAN in trading as well as examining its special characteristics. Additionally, we apply the proposed algorithm to cryptocurrency data and achieve reliable performance. We design AI trading algorithms by reusing trading markers identified during explainable trading dynamics discovery, applying them to HFT stock and cryptocurrency markets, besides constructing trading machines using identified trading markers. To the best of our knowledge, this study is the first to use interpretable machine learning to reveal HFT trading dynamics.
引用
收藏
页数:25
相关论文
共 50 条
  • [21] Explainable Machine Learning via Argumentation
    Prentzas, Nicoletta
    Pattichis, Constantinos
    Kakas, Antonis
    EXPLAINABLE ARTIFICIAL INTELLIGENCE, XAI 2023, PT III, 2023, 1903 : 371 - 398
  • [22] Explainable machine learning in materials science
    Xiaoting Zhong
    Brian Gallagher
    Shusen Liu
    Bhavya Kailkhura
    Anna Hiszpanski
    T. Yong-Jin Han
    npj Computational Materials, 8
  • [23] Explainable machine learning for diffraction patterns
    Nawaz, Shah
    Rahmani, Vahid
    Pennicard, David
    Setty, Shabarish Pala Ramakantha
    Klaudel, Barbara
    Graafsma, Heinz
    JOURNAL OF APPLIED CRYSTALLOGRAPHY, 2023, 56 : 1494 - 1504
  • [24] Explainable machine learning in materials science
    Zhong, Xiaoting
    Gallagher, Brian
    Liu, Shusen
    Kailkhura, Bhavya
    Hiszpanski, Anna
    Han, T. Yong-Jin
    NPJ COMPUTATIONAL MATERIALS, 2022, 8 (01)
  • [25] eXplainable Cooperative Machine Learning with NOVA
    Baur, Tobias
    Heimerl, Alexander
    Lingenfelser, Florian
    Wagner, Johannes
    Valstar, Michel F.
    Schuller, Bjoern
    Andre, Elisabeth
    KUNSTLICHE INTELLIGENZ, 2020, 34 (02): : 143 - 164
  • [26] Principles and Practice of Explainable Machine Learning
    Belle, Vaishak
    Papantonis, Ioannis
    FRONTIERS IN BIG DATA, 2021, 4
  • [27] Explainable Machine Learning for Trustworthy AI
    Giannotti, Fosca
    ARTIFICIAL INTELLIGENCE RESEARCH AND DEVELOPMENT, 2022, 356 : 3 - 3
  • [28] Explainable Machine Learning for Fraud Detection
    Psychoula, Ismini
    Gutmann, Andreas
    Mainali, Pradip
    Lee, S. H.
    Dunphy, Paul
    Petitcolas, Fabien A. P.
    COMPUTER, 2021, 54 (10) : 49 - 59
  • [29] Explainable machine learning models with privacy
    Bozorgpanah, Aso
    Torra, Vicenc
    PROGRESS IN ARTIFICIAL INTELLIGENCE, 2024, 13 (01) : 31 - 50
  • [30] eXplainable Cooperative Machine Learning with NOVA
    Tobias Baur
    Alexander Heimerl
    Florian Lingenfelser
    Johannes Wagner
    Michel F. Valstar
    Björn Schuller
    Elisabeth André
    KI - Künstliche Intelligenz, 2020, 34 : 143 - 164