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A Bayesian Classification Approach to Improving Performance for a Real-World Sales Forecasting Application

机译:贝叶斯分类方法,提高现实世界销售预测申请表现

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Many businesses rely on forecasting techniques to detect whether sales opportunities are likely to be won or at risk of being lost. This enables the businesses to respond proactively. This paper describes a new method of sales forecasting that improves on an existing Qualitative Sales Predictor (QSP) in Hewlett-Packard (HP). QSP is based on a series of qualitative assessments that are made by sales personnel, the results of which are combined using weighted factors. In this research, we have developed an alternative method of forecasting sales opportunities, with three key differences: (1) the qualitative assessments are supplemented with quantitative data describing attributes of the opportunity, (2) we replace the weight factors with a Tree Augmented Nai?ve Bayes (TAN) classifier that can capture dependences between variables and produces a probabilistic output to which thresholds can be applied, (3) the TAN classifier is of course learned from historical data, whereas the existing QSP has fixed weights. Our approach has an accuracy of 90.6% in predicting whether sales will be won or lost, a substantial improvement on the existing approach's accuracy of 75.6% on the same unseen test data.
机译:许多企业依赖预测技术来检测销售机会是否可能被赢得或损失风险。这使得企业能够积极响应。本文介绍了一种新的销售预测方法,可提高Hewlett-Packard(HP)的现有定性销售预测因素(QSP)。 QSP基于销售人员制造的一系列定性评估,其结果将使用加权因素组合。在这项研究中,我们开发了一种预测销售机会的替代方法,具有三个关键差异:(1)定性评估补充了描述机会属性的定量数据,(2)我们取代与树增强的重量因子ve贝雷斯(TAN)分类器可以捕获变量之间的依赖性并产生可以应用阈值的概率输出,(3)TAN分类器当然是从历史数据中学到的,而现有的QSP具有固定权重。预测销售是否会赢得或丢失,我们的方法具有90.6%,对现有方法的准确性大幅提高75.6%的同一看法试验数据。

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