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Using an asset price bubble model in tweet analytics

机译:在推特分析中使用资产价格泡沫模型

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Predictive methods in the context of big data needs to adopt new approaches. Justification can be derived from the volume of public data entering through microblogs in short periods of time. Based on such data predictions and other inferences are made in many areas such as politics, entertainment, and emergencies. In this paper we present B-function threshold model (BTM), a new approach for predictive analytics. BTM consists of a function/series (B-function) and a threshold. This approach is to predefine an appropriate model and test whether the data being considered meets threshold condition. Inferences are drawn based on the comparison. In this paper we adopt an asset bubble model that can capture mean reversion, stochastic, and speculative regimes as B-function. Empirical analysis is shown by applying the proposed method to Twitter data.
机译:大数据环境下的预测方法需要采用新方法。可以从短时间内通过微博输入的公共数据量中得出理由。基于这样的数据,可以在许多领域进行预测和其他推断,例如政治,娱乐和紧急情况。在本文中,我们介绍了B函数阈值模型(BTM),这是一种用于预测分析的新方法。 BTM由一个功能/系列(B功能)和一个阈值组成。这种方法是预定义合适的模型并测试所考虑的数据是否满足阈值条件。根据比较得出推断。在本文中,我们采用了资产泡沫模型,该模型可以将均值回归,随机和投机性策略捕获为B函数。通过将所提出的方法应用于Twitter数据,可以进行实证分析。

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