Zhewen Pictures Group Co.,Ltd, Hangzhou 31000, China.
Comput Intell Neurosci. 2022 Aug 9;2022:2970514. doi: 10.1155/2022/2970514. eCollection 2022.
The film industry has also caught the fast train of Internet development. Various movie resources have come into view. Users need to spend a lot of time searching for movies they are interested in. This method wastes time and is very bad. The article proposes an NMF personalized movie recommendation algorithm, which can recommend movies to users based on their historical behavior and preference. The research results of the article show the following: (1) the experiment counts movie reviews of different users in the same time span. The results show that 48.42% of users have only commented on a movie once, 79.76% of users have posted less than or equal to 5 comments, and 89.92% of user reviews have posted less than or equal to 10 times. (2) In the comparative experiments of the NMF algorithm in different dimensions, the effect of the NMF-E algorithm is much better than that of the NMF-A algorithm. The accuracy, recall, and 1 value of the NME-E algorithm are all 3 types. The experimental results show that the NME-E algorithm is the best among all algorithms. (3) In the experiment to test the effectiveness of the NMF personalized recommendation algorithm, comparing the experimental results, the MAE value of the improved NMF personalized recommendation algorithm is lower than that of the unimproved algorithm. When the number of neighbors is 10, the highest value of the improved MAE of the previous algorithm is 0.837. After the improved algorithm, the MAE value is the highest (0.83), and the MAE value has dropped by 0.007, indicating that the error is smaller after the improved algorithm, and the result of recommending movies is more accurate. The recall value of the four algorithms will increase as the number of neighbors increases. Among them, the recall value of the NMF algorithm proposed in the article is the highest among several algorithms. The highest value can reach 0.200, which is higher than the highest value of other algorithms. It shows that the recommendation effect of NMF algorithm is the best. (4) According to the results of the questionnaire, after using the NMF personalized recommendation algorithm, users' satisfaction increased from 20% to 50%, an increase of 30%, and their dissatisfaction decreased from 15% to 8%, a decrease of 7%. Relative satisfaction increased from 52% to 55%, an increase of 3%, satisfaction increased from 35% to 60%, an increase of 25%, and dissatisfaction decreased from 40% to 20%, a decrease of 20%, indicating that the algorithm can meet the requirements of most people.
电影行业也搭上了互联网发展的快车。各种电影资源层出不穷。用户需要花费大量时间搜索自己感兴趣的电影。这种方法既浪费时间,又非常糟糕。本文提出了一种 NMF 个性化电影推荐算法,可以根据用户的历史行为和偏好向用户推荐电影。文章的研究结果表明:(1)实验对同一时间段内不同用户的电影评论进行计数。结果表明,48.42%的用户只对一部电影评论过一次,79.76%的用户发表的评论少于或等于 5 条,89.92%的用户评论发表次数少于或等于 10 次。(2)在不同维度的 NMF 算法比较实验中,NMF-E 算法的效果明显优于 NMF-A 算法。NME-E 算法的准确率、召回率和 1 值均为 3 类。实验结果表明,NME-E 算法是所有算法中最好的。(3)在 NMF 个性化推荐算法有效性测试实验中,通过对比实验结果,改进后的 NMF 个性化推荐算法的 MAE 值低于未改进算法。当邻居数为 10 时,改进前算法的最高 MAE 值为 0.837。改进后,MAE 值最高(0.83),MAE 值下降了 0.007,表明改进后的算法误差更小,推荐电影的结果更准确。四个算法的召回值随着邻居数量的增加而增加。其中,文章提出的 NMF 算法的召回值在几种算法中最高。最高值可达 0.200,高于其他算法的最高值。这表明 NMF 算法的推荐效果最好。(4)根据问卷结果,使用 NMF 个性化推荐算法后,用户满意度从 20%提高到 50%,提高了 30%,不满度从 15%降低到 8%,降低了 7%。相对满意度从 52%提高到 55%,提高了 3%,满意度从 35%提高到 60%,提高了 25%,不满度从 40%降低到 20%,降低了 20%,表明算法能满足大多数人的需求。