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An Improved Collaborative Filtering Based Recommender System using Bat Algorithm

机译:一种改进的基于Bat算法的基于协同过滤的推荐系统

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Recommender Systems have proven to be of great aid in dealing with the issue of Information Overload by improving the user experience through quality recommendations. In recent times, heuristic techniques have been employed by researchers in recommender systems along with traditional methods of collaborative and content based filtering. On the same account, in this work a Bat algorithm based heuristic technique has been used to compute the weights of items (features) so as to find better neighbourhood for the active user. We argue and also prove using the results that this technique of giving weights to items using heuristic methods helps in achieving better personalized recommendations. The performance of this system was also compared to that of Artificial Bee Colony based system (ABC). The results indicated that BA performed 6.9% better than ABC in terms of Mean Absolute Error and F1 Score using our technique.
机译:事实证明,推荐系统可以通过质量建议改善用户体验,从而在处理信息超载问题方面提供极大帮助。近年来,研究人员已经在推荐系统中采用了启发式技术,以及传统的基于协作和基于内容的过滤方法。出于同样的原因,在这项工作中,基于蝙蝠算法的启发式技术已被用于计算项目(功能)的权重,以便为活动用户找到更好的邻域。我们争论并使用结果证明,使用启发式方法对项目加权的技术有助于实现更好的个性化建议。还将该系统的性能与基于人工蜂群的系统(ABC)的性能进行了比较。结果表明,使用我们的技术,BA在平均绝对误差和F1得分方面比ABC好6.9%。

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