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首页> 外文期刊>Educational and Psychological Measurement >An Entropy-Based Measure for Assessing Fuzziness in Logistic Regression
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An Entropy-Based Measure for Assessing Fuzziness in Logistic Regression

机译:Logistic回归中基于熵的模糊度评估

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摘要

This article introduces an entropy-based measure of data-model fit that can be used to assess the quality of logistic regression models. Entropy has previously been used in mixture-modeling to quantify how well individuals are classified into latent classes. The current study proposes the use of entropy for logistic regression models to quantify the quality of classification and separation of group membership. Entropy complements preexisting measures of data-model fit and provides unique information not contained in other measures. Hypothetical data scenarios, an applied example, and Monte Carlo simulation results are used to demonstrate the application of entropy in logistic regression. Entropy should be used in conjunction with other measures of data-model fit to assess how well logistic regression models classify cases into observed categories.
机译:本文介绍了一种基于熵的数据模型拟合度量,该度量可用于评估逻辑回归模型的质量。熵先前已用于混合物建模中,以量化将个人分类为潜在类别的程度。当前的研究提出将熵用于逻辑回归模型,以量化分类和组成员分离的质量。熵补充了数据模型拟合的现有度量,并提供了其他度量未包含的独特信息。假设数据场景,一个应用示例和蒙特卡洛模拟结果用于证明熵在逻辑回归中的应用。熵应与数据模型拟合的其他度量结合使用,以评估逻辑回归模型将案例分类为观察类别的程度。

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