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A cost-sensitive technique for positive-example learning supporting content-based product recommendations in B-to-C e-commerce

机译:一种成本敏感的积极案例学习技术,支持B2C电子商务中基于内容的产品推荐

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摘要

Existing supervised learning techniques are able to support product recommendations in business-to-consumer e-commerce but become ineffective in scenarios characterized by single-class learning, such as a training sample that consists of some examples pertaining to only one outcome class (positive or negative). To address such challenges, we develop a COst-sensitive Learning-based Positive Example Learning (COLPEL) technique, which constructs an automated classifier from a training sample comprised of positive examples and a much larger number of unlabeled examples. The proposed technique incorporates cost-proportionate rejection sampling to derive, from unlabeled examples, a subset that is likely to feature negative examples in the training sample. Our technique follows a committee machine approach and thereby constructs a set of classifiers that make joint product recommendations while mitigating the potential biases common to the use of a single classifier. We evaluate the proposed method with customers' book ratings collected from Amazon.com and include two prevalent techniques for benchmark purposes; namely, positive naive Bayes and positive example-based learning. According to our results, the proposed COLPEL technique outperforms both benchmarks, as measured by accuracy and positive and negative F1 scores.
机译:现有的监督学习技术能够支持企业对消费者的电子商务中的产品推荐,但在以单班学习为特征的场景中变得无效,例如训练样本仅包含一些与一个结果类别(正或负)有关的示例。负)。为了应对此类挑战,我们开发了一种基于COst敏感学习的正例学习(COLPEL)技术,该技术从包含正例和大量未标记例的训练样本中构建了自动分类器。所提出的技术结合了成本成比例的拒绝采样,以从未标记的示例中得出一个可能在训练样本中具有负面示例特征的子集。我们的技术遵循委员会机器方法,从而构造了一组分类器,这些分类器提出了联合产品推荐,同时减轻了使用单个分类器时常见的潜在偏差。我们使用从Amazon.com收集的客户书籍评价来评估所提出的方法,并包括两种用于基准测试的流行技术:即积极的朴素贝叶斯和积极的基于实例的学习。根据我们的结果,建议的COLPEL技术优于两个基准,通过准确性以及F1分数的正负来衡量。

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