Identifying Information Types in the Estimation of Informed Trading: an Improved Algorithm

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2024

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Multidisciplinary Digital Publishing Institute (MDPI)

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Events

Abstract

The growing frequency of news arrivals, partly fueled by the proliferation of data sources, has made the assumptions of the classical probability of informed trading (PIN) model outdated. In particular, the model’s assumption of a single type of information event no longer reflects the complexity of modern financial markets, making the accurate detection of information types (layers) crucial for estimating the probability of informed trading. We propose a layer detection algorithm to accurately find the number of distinct information types within a dataset. It identifies the number of information layers by clustering order imbalances and examining their homogeneity using properly constructed confidence intervals for the Skellam distribution. We show that our algorithm manages to find the number of information layers with very high accuracy both when uninformed buyer and seller intensities are equal and when they differ from each other (i.e., between 86% and 95% accuracy rates). We work with more than 500,000 simulations of quarterly datasets with various characteristics and make a large set of robustness checks. © 2024 by the authors.

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cluster analysis, information asymmetry, layer detection algorithm, MPIN, multilayer probability of informed trading, private information

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Journal of Risk and Ficial Management

Volume

17

Issue

9

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