How Robust are Limit Order Book Representations under Data Perturbation?
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Cited by:
- Jian Guo & Saizhuo Wang & Lionel M. Ni & Heung-Yeung Shum, 2022. "Quant 4.0: Engineering Quantitative Investment with Automated, Explainable and Knowledge-driven Artificial Intelligence," Papers 2301.04020, arXiv.org.
- Matteo Prata & Giuseppe Masi & Leonardo Berti & Viviana Arrigoni & Andrea Coletta & Irene Cannistraci & Svitlana Vyetrenko & Paola Velardi & Novella Bartolini, 2023. "LOB-Based Deep Learning Models for Stock Price Trend Prediction: A Benchmark Study," Papers 2308.01915, arXiv.org, revised Sep 2023.
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NEP fields
This paper has been announced in the following NEP Reports:- NEP-BIG-2021-10-25 (Big Data)
- NEP-FMK-2021-10-25 (Financial Markets)
- NEP-MST-2021-10-25 (Market Microstructure)
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