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Theory and Use Case of Game-theoretic Lexical Link Analysis

机译:博弈论的词汇联系分析理论与应用案例

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We demonstrate a machine learning method, namely lexical link analysis (LLA), which can be used to discover high-value information from financial data. LLA is an unsupervised learning method that does not require manually labeled training data. We also demonstrate how to form LLA in a game-theoretic framework. We show that with game theory: high-value information selected by LLA reaches a Nash equilibrium by superpositioning popular and anomalous information and at the same time generates high social welfare, therefore containing higher intrinsic value. We show the results of LLA of two sets of financial data validating and correlating with the ground truth.
机译:我们演示了一种机器学习方法,即词汇链接分析(LLA),可用于从财务数据中发现高价值信息。 LLA是一种无监督的学习方法,不需要手动标记的训练数据。我们还演示了如何在游戏理论框架中形成LLA。我们用博弈论证明:LLA选择的高价值信息通过将流行信息和异常信息叠加而达到Nash均衡,同时产生了很高的社会福利,因此包含更高的内在价值。我们显示了两组财务数据的LLA结果,这些数据验证了真实的事实并与之相关。

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