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Semi-Supervised Regression for Evaluating Convenience Store Location

机译:评估便利店位置的半监督回归

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Location plays a very important role in the retail business due to its huge and long-term investment. In this paper, we propose a novel semi-supervised regression model for evaluating convenience store location based on spatial data analysis. First, the input features for each convenience store can be extracted by analyzing the elements around it based on a geographic information system, and the turnover is used to evaluate its performance. Second, considering the practical application scenario, a manifold regularization model with one semi-supervised performance information constraint is provided. The promising experimental results in the real-world dataset demonstrate the effectiveness of the proposed approach in performance prediction of certain candidate locations for new convenience store opening.
机译:由于其巨大和长期投资,位置在零售业务中发挥着非常重要的作用。在本文中,我们提出了一种新的半监督回归模型,用于基于空间数据分析评估便利店位置。首先,可以通过基于地理信息系统分析它周围的元素来提取每个便利店的输入特征,并且营业额用于评估其性能。其次,考虑到实际应用方案,提供了具有一个半监督性能信息约束的歧管正则化模型。现实世界数据集中有希望的实验结果证明了建议的方法在新便利店开放的某些候选地点的性能预测中的有效性。

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