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Modeling POMDPs for Generating and Simulating Stock Investment Policies

机译:建模POMDP以生成和模拟股票投资政策

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Analysts and investors use Technical Analysis tools to create charts and price indicators that help them in decision making. Chart patterns and indicators are not deterministic and even analysts may have different interpretations, depending on their experience, background and emotional state. In this way, tools that allow users to formalize these concepts and study investment policies based on them can provide a more solid basis for decision making. In this paper, we present a tool we have built to formally model stock investment contexts as Partially Observable Markov Decision Processes (POMDP), so that investment policies in the stock market can be generated and simulated, taking into consideration the accuracy of Technical Analysis techniques. In our models, we assume that the trend for the future prices is part of the state at a certain time and can be "partially observed" by means of Technical Analysis techniques. Historical series are used to provide probabilities related to the accuracy of Technical Analysis techniques, which are used by an automated planning algorithm to create policies that try to maximize the profit. The tool also provides flexibility for trying and comparing different models.
机译:分析师和投资者使用技术分析工具来创建图表和价格指标,以帮助他们进行决策。图表的模式和指标不是确定性的,甚至分析师也可能有不同的解释,这取决于他们的经验,背景和情绪状态。通过这种方式,允许用户形式化这些概念并研究基于这些概念的投资策略的工具可以为决策提供更坚实的基础。在本文中,我们介绍了一种工具,用于将股票投资环境正式建模为部分可观察的马尔可夫决策过程(POMDP),从而可以在考虑技术分析技术准确性的情况下生成和模拟股票市场中的投资政策。 。在我们的模型中,我们假设将来价格的趋势在特定时间是状态的一部分,并且可以通过技术分析技术“部分观察”。历史序列用于提供与技术分析技术的准确性相关的概率,自动计划算法使用这些概率来创建尝试使利润最大化的策略。该工具还为尝试和比较不同的模型提供了灵活性。

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