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 sub-periods, doing sub- agent performance evaluation and re-selection of them at the end of each sub- period, and collecting returns and losses incrementally. With this approach, the return becomes a function of hyper-parameters such as market data granularity (refresh rate), the execution sub-period duration, number of active sub-agents, and their individual strategies. Sub-agent selection for the next trading sub-period is made based on return/loss and alpha values obtained during internal backtesting as well as real trading. Experiments with the AMSA have been performed under different market conditions relying on historical data and proved a high probability of positive alpha throughout the periods of trading activity in the case of properly selected hyper-parameters.
翻译:由于这一领域的国家行动空间的高度性和复杂性,可以将其视为一个与金融市场所约束的目标和环境范围有关的“狭义的AGI”问题。适应性多战略代理方法为长期处理限制订单簿(LOB)中正“alpha”定位引入了一种新的解决方案,即利用多个子代理实施不同的战略,根据不断变化的市场条件动态选择这些代理商。AMSA没有提供自己的具体战略,同时负责将市场创造活动的时期分成较小的执行子时期,对每个子时期的历史数据进行内部回溯测试,在每个子时期结束时进行子代理业绩评估和重新选择,并逐步收集收益和损失。随着这一方法的采用,回报成为市场数据弹性交易条件(restremability)等超参数的函数。在下个时期,执行的市场创造活动周期内的市场生产活动周期的相对概率(retary AGIAGI),在实际交易交易周期的后期中,在实际交易周期内进行实际回溯的亚值,在实际的回溯期中,在实际交易交易/回溯的亚值中,在实际的回回溯的次周期中,在实际的回回溯性交易中,在实际交易中,在实际交易交易中进行中,在实际的回回的回的回的回的次交易交易中进行中进行。