Microstructure-Empowered Stock Factor Extraction and Utilization
Xianfeng Jiao, Zizhong Li, Chang Xu, Yang Liu, Weiqing Liu, Jiang, Bian

TL;DR
This paper introduces a novel framework that leverages microstructure data to extract meaningful stock factors, significantly improving trend prediction and order execution across various granularities.
Contribution
The paper presents a new method combining a Context Encoder and an unsupervised Factor Extractor to effectively utilize high-frequency order flow data for diverse stock analysis tasks.
Findings
Efficiently processes an entire year's order flow data.
Extracted factors outperform traditional methods in trend prediction.
Enhances order execution strategies at second and minute levels.
Abstract
High-frequency quantitative investment is a crucial aspect of stock investment. Notably, order flow data plays a critical role as it provides the most detailed level of information among high-frequency trading data, including comprehensive data from the order book and transaction records at the tick level. The order flow data is extremely valuable for market analysis as it equips traders with essential insights for making informed decisions. However, extracting and effectively utilizing order flow data present challenges due to the large volume of data involved and the limitations of traditional factor mining techniques, which are primarily designed for coarser-level stock data. To address these challenges, we propose a novel framework that aims to effectively extract essential factors from order flow data for diverse downstream tasks across different granularities and scenarios. Our…
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Taxonomy
TopicsStock Market Forecasting Methods · Complex Systems and Time Series Analysis · Time Series Analysis and Forecasting
