Integrating Multiple Experts for Correction Process in InteractiveRecommendation Systems

Xuan Hau Pham, Jason J. Jung, N. Nguyen
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引用次数: 10

Abstract

To improve the performance of the recommendation process, most of recommendation systems (RecSys) should collect better ratings from users. Particularly, rating process is an important task in interactive RecSys which can ask users to correct their own ratings. However, in real world, there are many inconsistencies (e.g., mistakes and missing values) or incorrect in the user ratings. Thereby, expert-based recommendation framework has been studied to select the most relevant experts in a certain item attribute (or value). This kind of RecSys can i) discover user preference and ii) determine a set of experts based on attribute and value of items. In this paper, we propose a consensual recommendation framework integrating multiple experts to conduct correction process. Since the ratings from experts are assumed to be reliable and correct, we first analyze user profile to determine the preference and find out a set of experts. Next, we measure a minimal inconsistency interval (MinIncInt) that might contain incorrect ratings. Finally, we propose solutions to correct the incorrect rating based on ratings from multiple experts.
交互式推荐系统中多专家纠错过程的集成
为了提高推荐过程的性能,大多数推荐系统(RecSys)应该从用户那里收集更好的评分。特别是,在交互式RecSys中,评分过程是一个重要的任务,它可以要求用户纠正自己的评分。然而,在现实世界中,在用户评级中存在许多不一致(例如,错误和缺失值)或不正确。因此,研究了基于专家的推荐框架,在某项属性(或值)中选择最相关的专家。这种RecSys可以i)发现用户偏好,ii)根据物品的属性和价值确定一组专家。在本文中,我们提出了一个协商一致的建议框架,整合多位专家进行纠正过程。由于专家的评分被认为是可靠和正确的,我们首先分析用户的个人资料来确定偏好并找出一组专家。接下来,我们测量可能包含不正确评级的最小不一致间隔(MinIncInt)。最后,我们提出了基于多个专家的评级来纠正错误评级的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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