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Latent variable discovery in classification models

机译:分类模型中的潜在变量发现

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摘要

The naive Bayes model makes the often unrealistic assumption that the feature variables are mutually independent given the class variable. We interpret a violation of this assumption as an indication of the presence of latent variables, and we show how latent variables can be detected. Latent variable discovery is interesting, especially for medical applications, because it can lead to a better understanding of application domains. It can also improve classification accuracy and boost user confidence in classification models.
机译:朴素的贝叶斯模型常常做出不现实的假设,即给定类变量,特征变量是相互独立的。我们将违反此假设的情况解释为潜在变量的存在的指示,并说明如何检测到潜在变量。潜在变量发现很有趣,尤其是对于医疗应用而言,因为它可以导致对应用程序域的更好理解。它还可以提高分类准确性,并提高用户对分类模型的信心。

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