从用户意图到物联网中的IF-THEN规则

Fulvio Corno, Luigi De Russis, A. M. Roffarello
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引用次数: 17

摘要

在物联网时代,用户愿意通过触发操作规则来个性化他们连接的实体(即智能设备和在线服务)的联合行为,例如“如果Nest入口安全摄像头检测到移动,那么就会闪烁厨房里的飞利浦Hue灯”。不幸的是,新支持技术的传播使得触发器和动作之间可能的组合数量不断增加,从而激发了帮助用户发现新规则和功能的需求,例如通过推荐技术。为此,我们提出了一个语义会话搜索和推荐(CSR)系统,该系统能够建议相关的IF-THEN规则,这些规则可以从抽象的用户需求开始,轻松地部署在不同的上下文中。通过利用会话代理,用户可以通过在高层次上指定一组功能来传达她当前的个性化意图,例如,当她离开房间时降低房间的温度。基于这个输入,实现了一个语义推荐过程,该过程考虑了(a)当前用户的意图,(b)用户拥有的连接实体,以及(c)用户个人资料显示的长期偏好。如果对建议不满意,那么用户可以与系统交谈以提供进一步的反馈,即短期偏好,从而允许提供更符合原始意图的改进建议。我们通过模拟用户和真实世界数据运行不同的离线实验来进行评估。首先,我们测试了不同配置下的推荐过程,结果表明,随着算法与用户交互的进行,推荐的准确性和与目标项目的相似度都在增加。然后,我们与其他类似的基线推荐系统进行比较。结果是有希望的,并且证明了在推荐满足当前用户个性化意图的IF-THEN规则方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From Users’ Intentions to IF-THEN Rules in the Internet of Things
In the Internet of Things era, users are willing to personalize the joint behavior of their connected entities, i.e., smart devices and online service, by means of trigger-action rules such as “IF the entrance Nest security camera detects a movement, THEN blink the Philips Hue lamp in the kitchen.” Unfortunately, the spread of new supported technologies makes the number of possible combinations between triggers and actions continuously growing, thus motivating the need of assisting users in discovering new rules and functionality, e.g., through recommendation techniques. To this end, we present , a semantic Conversational Search and Recommendation (CSR) system able to suggest pertinent IF-THEN rules that can be easily deployed in different contexts starting from an abstract user’s need. By exploiting a conversational agent, the user can communicate her current personalization intention by specifying a set of functionality at a high level, e.g., to decrease the temperature of a room when she left it. Stemming from this input, implements a semantic recommendation process that takes into account (a) the current user’s intention, (b) the connected entities owned by the user, and (c) the user’s long-term preferences revealed by her profile. If not satisfied with the suggestions, then the user can converse with the system to provide further feedback, i.e., a short-term preference, thus allowing to provide refined recommendations that better align with the original intention. We evaluate by running different offline experiments with simulated users and real-world data. First, we test the recommendation process in different configurations, and we show that recommendation accuracy and similarity with target items increase as the interaction between the algorithm and the user proceeds. Then, we compare with other similar baseline recommender systems. Results are promising and demonstrate the effectiveness of in recommending IF-THEN rules that satisfy the current personalization intention of the user.
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