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Towards early purchase intention prediction in online session based retailing systems

机译:在基于在线会话的早期购买意图预测

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摘要

Purchase prediction has an important role for decision-makers in e-commerce to improve consumer experience, provide personalised recommendations and increase revenue. Many works investigated purchase prediction for session logs by analysing users' behaviour to predict purchase intention after a session has ended. In most cases, e-shoppers prefer to be anonymous while browsing the websites and after a session has ended, identifying users and offering discounts can be challenging. Therefore, after a session ends, predicting purchase intention may not be useful for the e-commerce strategists. In this work, we propose and develop an early purchase prediction framework using advanced machine learning models to investigate how early purchase intention in an ongoing session can be predicted. Since users could be anonymous, this could help to give real-time offers and discounts before the session ends. We use dynamically created session features after each interaction in a session, and propose a utility scoring method to evaluate how early machine learning models can predict the probability of purchase intention. The proposed framework is validated with a real-world dataset. Computational experiments show machine learning models can identify purchase intention early with good performance in terms of Area Under Curve (AUC) score which shows success rate of machine learning models on early purchase prediction.
机译:购买预测对电子商务中的决策者具有重要作用,以提高消费者体验,提供个性化的建议和增加收入。许多作品通过分析用户的行为来预测会话结束后预测购买意图的购买预测。在大多数情况下,电子购物者更喜欢在浏览网站时匿名,并且在会话结束后,识别用户并提供折扣可能具有挑战性。因此,在会议结束后,预测购买意向可能对电子商务战略家无用。在这项工作中,我们建议并开发了使用先进的机器学习模型的早期购买预测框架,以调查如何预测正在进行的会议中的早期购买意图。由于用户可能是匿名的,这有助于在会话结束之前提供实时优惠和折扣。我们在会话中的每个交互后使用动态创建的会话特征,并提出了一个公用事业评分方法来评估早期机器学习模型如何预测购买意图的概率。建议的框架与真实世界数据集进行了验证。计算实验显示机器学习模型可以在曲线(AUC)分数下的面积方面识别购买意图,这表明了在早期购买预测上的机器学习模型的成功率。

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