Detecting intraday financial market states using temporal clustering
Dieter Hendricks, Tim Gebbie, Diane Wilcox

TL;DR
This paper introduces a high-speed clustering method to identify and analyze intraday financial market states from streaming data, enabling real-time detection and improved trading strategies.
Contribution
It presents a novel real-time intraday market state detection scheme using correlation matrices and temporal clustering, enhancing high-frequency trading decision-making.
Findings
Effective real-time detection of market states
Identification of hierarchical market behavior
Low-dimensional state descriptors for trading algorithms
Abstract
We propose the application of a high-speed maximum likelihood clustering algorithm to detect temporal financial market states, using correlation matrices estimated from intraday market microstructure features. We first determine the ex-ante intraday temporal cluster configurations to identify market states, and then study the identified temporal state features to extract state signature vectors which enable online state detection. The state signature vectors serve as low-dimensional state descriptors which can be used in learning algorithms for optimal planning in the high-frequency trading domain. We present a feasible scheme for real-time intraday state detection from streaming market data feeds. This study identifies an interesting hierarchy of system behaviour which motivates the need for time-scale-specific state space reduction for participating agents.
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Stock Market Forecasting Methods · Financial Markets and Investment Strategies
