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Logistic Regression Analysis of Customer Satisfaction Data

机译:客户满意度数据的Logistic回归分析

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摘要

Variation exists in all processes. Significant work has been done to identify and remove sources of variation in manufacturing processes resulting in large returns for companies. However, business process optimization is an area that has a large potential return for a company. Business processes can be difficult to optimize due to the nature of the output variables associated with them. Business processes tend to have output variables that are binary, nominal or ordinal. Examples of these types of output include whether a particular event occurred, a customer's color preference for a new product and survey questions that assess the extent of the survey respondent's agreement with a particular statement. Output variables that are binary, nominal or ordinal cannot be modeled using ordinary least-squares regression. Logistic regression is a method used to model data where the output is binary, nominal or ordinal. This article provides a review of logistic regression and demonstrates its use in modeling data from a business process involving customer feedback.
机译:在所有过程中都存在差异。已经进行了大量工作来识别和消除制造过程中的差异来源,从而为公司带来丰厚的回报。但是,业务流程优化是一个对公司具有巨大潜在回报的领域。由于与业务流程相关联的输出变量的性质,业务流程可能难以优化。业务流程倾向于具有二进制,名义或序数的输出变量。这些类型的输出示例包括是否发生了特定事件,客户对新产品的颜色偏爱以及调查问题,这些问题评估了调查受访者对特定声明的同意程度。不能使用普通的最小二乘回归对二进制,名义或有序的输出变量进行建模。 Logistic回归是一种用于对输出为二进制,名义或序数的数据进行建模的方法。本文提供了逻辑回归的回顾,并演示了其在对涉及客户反馈的业务流程进行数据建模中的用途。

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