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Computational Experiment-Based Evaluation on Context-Aware O2O Service Recommendation

机译:基于计算实验的上下文感知O2O服务推荐评估

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摘要

O2O (online to offline) service recommendation is a typical context-aware service application, which needs to provide the most suitable services to customers in time according to their user profile and current context. By means of composing various data sources, different O2O service recommendation strategies can be customized, which may lead to great performance difference. Incorrect or non-real-time service recommendation would not work well and even cause negatives consequences. As a result, how to evaluate the performance of different O2O service recommendation strategies and select the most suitable one has become a key problem in the field. Due to the diversity and the variability of context events, as well as the economic, legal, and ethical impact, it is difficult or even impossible for traditional methods to realize comprehensive evaluation of various service strategies. Based on the background, this paper proposes a computational experiment-based evaluation method of O2O service recommendation strategies, which mainly consists of three parts: customization of O2O service strategies, modeling of experiment system, and execution of experiment evaluation. As a case study, the method was applied to Food O2O service. Three kinds of service strategies were compared respectively under two different market environments. Experiment results show that the proposed evaluation method is effective.
机译:O2O(在线到离线)服务推荐是一种典型的上下文感知服务应用程序,它需要根据客户的用户资料和当前上下文及时向客户提供最合适的服务。通过组合各种数据源,可以定制不同的O2O服务推荐策略,这可能导致巨大的性能差异。错误或非实时的服务建议将无法正常工作,甚至会带来负面影响。因此,如何评估不同的O2O服务推荐策略的性能并选择最合适的策略已经成为该领域的关键问题。由于上下文事件的多样性和可变性以及经济,法律和道德影响,因此传统方法很难甚至不可能实现对各种服务策略的综合评估。在此基础上,提出了一种基于计算实验的O2O服务推荐策略评价方法,主要包括O2O服务策略定制,实验系统建模和实验评价执行三部分。作为案例研究,该方法被应用于食品O2O服务。在两种不同的市场环境下分别比较了三种服务策略。实验结果表明,该方法是有效的。

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