改进K-Means算法在协同推荐系统中的应用

Hui Jing
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引用次数: 1

摘要

随着大数据时代信息资源的爆发式增长,人类逐渐陷入严重的“信息超载”局面。面对海量数据,协同过滤算法在信息过滤和信息提炼方面发挥着重要作用。然而,协同过滤推荐算法的推荐质量和效率较低。本研究将改进的人工蜂群算法与K-means算法相结合,应用于推荐系统中,形成协同过滤推荐算法。实验结果表明,新适应度函数的MAE值平均为0.767,在聚类效果上具有良好的分离性和紧凑性。该算法具有较高的搜索精度和速度。与原有的协同过滤算法相比,该算法的平均绝对误差值较低,运行时间仅为50 s。提高了推荐质量,保证了推荐效率,为改进协同过滤推荐算法提供了新的研究路径。
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Application of Improved K-Means Algorithm in Collaborative Recommendation System
With the explosive growth of information resources in the age of big data, mankind has gradually fallen into a serious “information overload” situation. In the face of massive data, collaborative filtering algorithm plays an important role in information filtering and information refinement. However, the recommendation quality and efficiency of collaborative filtering recommendation algorithms are low. The research combines the improved artificial bee colony algorithm with K-means algorithm and applies them to the recommendation system to form a collaborative filtering recommendation algorithm. The experimental results show that the MAE value of the new fitness function is 0.767 on average, which has good separation and compactness in clustering effect. It shows high search accuracy and speed. Compared with the original collaborative filtering algorithm, the average absolute error value of this algorithm is low, and the running time is only 50 s. It improves the recommendation quality and ensures the recommendation efficiency, providing a new research path for the improvement of collaborative filtering recommendation algorithm.
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