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Collaborative Preference Elicitation Based on Dynamic Peer Recommendations

机译:基于动态同行建议的协作偏好阐述

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Recommender Systems, in order to recommend correctly, demand huge information related to the past transactions and behavior of the user. In the events, where the data is inconsistent or sparse, the systems show a decline in its predictions or recommendations. Here we propose a new preference elicitation system that is based on preference from closed user group. The implicit behavior of the user is tracked when the user picks up an item. The explicit behavior is tracked by the user-ratings for the given item. The user-preference is computed on a memory-based model taking in account the implicit behavior. The peers are identified based on user-similarity on the explicit-preference indicator. The peer preferences are used on the test-dataset to find the percentage of preference that could be matched. The algorithm has been tested on MovieLens dataset and has given competitive results over the comparable techniques like sliding window method or collaborative filtering methods in isolation.
机译:推荐系统,以便正确推荐,要求与用户过去的交易和行为相关的巨额信息。在数据不一致或稀疏的事件中,系统显示其预测或建议的下降。在这里,我们提出了一种基于封闭用户组的偏好的新的偏好赋予系统。当用户拾取项目时,跟踪用户的隐式行为。由给定项目的用户评级跟踪显式行为。在考虑隐式行为的基于内存的模型上计算用户偏好。基于明确偏好指示符上的用户相似性识别对等体。对等体首选项用于测试数据集以查找可以匹配的偏好百分比。该算法已经在Movielens数据集上进行了测试,并且在相当的技术上给出了竞争力,例如滑动窗口方法或单独的协作过滤方法。

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