Adaptive Multi-Strategy Market-Making Agent For Volatile Markets
Ali Raheman, Anton Kolonin, Alexey Glushchenko, Arseniy Fokin, Ikram, Ansari

TL;DR
This paper introduces an adaptive multi-strategy market-making agent for volatile crypto markets that dynamically selects among multiple sub-agents to maximize gains and reduce losses based on market conditions.
Contribution
It presents a novel multi-strategy agent framework that segments trading periods, performs internal backtesting, and adaptively re-selects strategies to optimize market-making performance.
Findings
High probability of positive alpha with proper hyper-parameter tuning
Effective segmentation and re-selection improve trading outcomes
Demonstrated robustness across different market conditions
Abstract
Crypto-currency market uncertainty drives the need to find adaptive solutions to maximise gain or at least to avoid loss throughout the periods of trading activity. Given the high dimensionality and complexity of the state-action space in this domain, it can be treated as a "Narrow AGI" problem with the scope of goals and environments bound to financial markets. Adaptive Multi-Strategy Agent approach for market-making introduces a new solution to maximise positive "alpha" in long-term handling limit order book (LOB) positions by using multiple sub-agents implementing different strategies with a dynamic selection of these agents based on changing market conditions. AMSA provides no specific strategy of its own while being responsible for segmenting the periods of market-making activity into smaller execution sub-periods, performing internal backtesting on historical data on each of the…
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Taxonomy
TopicsStock Market Forecasting Methods · Financial Markets and Investment Strategies · Complex Systems and Time Series Analysis
