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Original paper

Adaptive Quantitative Trading: An Imitative Deep Reinforcement Learning Approach

Volume: 34, Issue: 02, Pages: 2128 - 2135
Published: Apr 3, 2020
Abstract
In recent years, considerable efforts have been devoted to developing AI techniques for finance research and applications. For instance, AI techniques (e.g., machine learning) can help traders in quantitative trading (QT) by automating two tasks: market condition recognition and trading strategies execution. However, existing methods in QT face challenges such as representing noisy high-frequent financial data and finding the balance between...
Paper Details
Title
Adaptive Quantitative Trading: An Imitative Deep Reinforcement Learning Approach
Published Date
Apr 3, 2020
Volume
34
Issue
02
Pages
2128 - 2135
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