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Using Contextual Information to Decrease the Cost of Incorrect Predictions in On-line Customer Behavior Modeling

机译:使用上下文信息减少在线客户行为建模中错误预测的成本

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The performance of user profiling models depends on both the predictive accuracy and the cost of incorrect predictions. In this paper we study whether including contextual information leads to a decrease in the misclassification cost. Several experimental analyses were done by varying the cost ratio, the market granularity and the granularity of context. The experimental results show that context leads to a decrease in the misclassification cost under particular conditions. These findings have significant implications for companies that have to decide whether to gather contextual information and make it actionable: how deep it should be and which unit of analysis to consider in market research.
机译:用户配置文件模型的性能取决于预测准确性和错误预测的成本。在本文中,我们研究了包括上下文信息是否会导致误分类成本的降低。通过改变成本比,市场粒度和上下文粒度进行了一些实验分析。实验结果表明,在特定条件下,上下文导致误分类成本的降低。这些发现对必须决定是否收集上下文信息并使之具有可行性的公司具有重大意义:应该深入多大,以及在市场研究中要考虑哪个分析单位。

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