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A Logistic Regression Model for Small Sample Classification Problems with Hidden Variables and Non-Linear Relationships: An Application in Business Analytics

机译:具有隐藏变量和非线性关系的小样本分类问题的逻辑回归模型:业务分析中的应用

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Logistic regression is one of the frequently used models in pattern recognition, especially in binary classification tasks. We focus on a class of small-sample classification problems where logistic regression seems to be a "natural" choice for the classifier, yet its direct application yields sub-optimal results. Specifically, we consider cases when: 1) input-output relationships are non-linear, 2) there is a need to estimate hidden states or auxiliary variables in the model, and 3) the training set is small preventing the use of more sophisticated techniques. We first describe an approach to compute the parameters of the regression, which addresses the issue of estimating hidden variables. We then describe a recursive adaptation procedure that identifies the most significant nonlinear relationships in the data and adapts the model by introducing corresponding higher-order terms. The performance of the method is tested in a business modeling application, demonstrating significant improvements over the traditional classifiers.
机译:Logistic回归是模式识别中常用模型之一,尤其是二进制分类任务。我们专注于一类小样本分类问题,其中Logistic回归似乎是分类器的“自然”选择,但其直接申请产生了次优效果。具体而言,我们考虑以下情况时间:1)输入输出关系是非线性的,2)需要估计模型中的隐藏状态或辅助变量,3)训练集是小的阻止使用更复杂的技术。我们首先描述一种计算回归参数的方法,它解决了估计隐藏变量的问题。然后,我们描述了一种递归适应过程,其识别数据中最重要的非线性关系,并通过引入相应的高阶项来适应模型。该方法的性能在业务建模应用中进行了测试,展示了传统分类器的显着改进。

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