Sustainable Development: A Semantics-aware Trends for Movies Recommendation System using Modern NLP

Q3 Computer Science
Shadi AlZu’b, A. Zraiqat, Samar Hendawi
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引用次数: 9

Abstract

Abstract Recommendation systems are an important feature in the proposed virtual life, where users are often stuck with choices most of the time and need help to be able to find what they are looking for. In this work, contentbased techniques have been employed in the proposed recommender system in two ways, a deep review for content and features contents such as (cast, crew, keywords, and genres) has been conducted. A preprocessing stage using TF-IDF and CountVectorizer methods have been employed efficiently to prepare the dataset for any similarity measurements. Cosine similarity algorithm has been employed as well with and without sigmoid and linear kernals. The achieved result proves that similarities between movies using TF-IDF with - Cosine similarity (sigmoid kernel) overcomes the TF-IDF with - Cosine similarity (linear_kernel) and Cosine similarity with CountVectorizer in collaborative filtering. The accuracy values of different machine learning models are validated with K-fold Cross Validator techniques. The performance evaluation has been measured using ROOT Mean Square Error and Mean Absolute Error. Five Machine learning algorithms (NormalPredictor, SVD, KNNBasic (with k=20 and K=10), KNNBasic (with sim_options), and NMF (in several rating scales)). Accuracies are finally been validated with 3 folds from each validator. The best achieved RMSE and MAE scores are using SVD (RMSE = 90%) and (MAE = 69%), followed by KNNBasic (with sim_options, K= 20), NMF, KNNBasic (K=20), KNNBasic (K=10), ending with KNNBasic(sim_options, K= 10). Keywords: Recommendation System, Sustainable Development, Artificial Intelligence, Collaborative Filtering, Content-Based, Cosine Similarity, Movies Recommendation, NLP, Machine Learning Application.
可持续发展:现代NLP电影推荐系统的语义化趋势
摘要推荐系统是所提出的虚拟生活中的一个重要功能,在虚拟生活中,用户通常在大多数时间都被选择所困扰,需要帮助才能找到他们想要的东西。在这项工作中,基于内容的技术以两种方式被应用于所提出的推荐系统中,对内容和特色内容(如演员、剧组、关键词和流派)进行了深入的审查。使用TF-IDF和CountVectorizer方法的预处理阶段已被有效地用于为任何相似性测量准备数据集。余弦相似算法也被用于有和没有S形核和线性核的情况。结果证明,在协同滤波中,使用具有余弦相似性的TF-IDF(sigmoid核)的电影之间的相似性克服了具有余弦相似度的TF-IDF(linear_kernel)和使用CountVectorizer的余弦相似性。使用K-fold交叉验证器技术验证了不同机器学习模型的准确性值。使用ROOT均方误差和平均绝对误差对性能评估进行了测量。五种机器学习算法(NormalPredictor、SVD、KNNBasic(k=20和k=10)、KNNBBasic(带sim_options)和NMF(在几个评级量表中))。准确度最终通过每个验证器的3次折叠进行验证。RMSE和MAE得分最好的是使用SVD(RMSE=90%)和(MAE=69%),其次是KNNBasic(具有sim_options,K=20)、NMF、KNNBasic(K=20。关键词:推荐系统,可持续发展,人工智能,协同过滤,基于内容,余弦相似度,电影推荐,NLP,机器学习应用。
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来源期刊
International Journal of Advances in Soft Computing and its Applications
International Journal of Advances in Soft Computing and its Applications Computer Science-Computer Science Applications
CiteScore
3.30
自引率
0.00%
发文量
31
期刊介绍: The aim of this journal is to provide a lively forum for the communication of original research papers and timely review articles on Advances in Soft Computing and Its Applications. IJASCA will publish only articles of the highest quality. Submissions will be evaluated on their originality and significance. IJASCA invites submissions in all areas of Soft Computing and Its Applications. The scope of the journal includes, but is not limited to: √ Soft Computing Fundamental and Optimization √ Soft Computing for Big Data Era √ GPU Computing for Machine Learning √ Soft Computing Modeling for Perception and Spiritual Intelligence √ Soft Computing and Agents Technology √ Soft Computing in Computer Graphics √ Soft Computing and Pattern Recognition √ Soft Computing in Biomimetic Pattern Recognition √ Data mining for Social Network Data √ Spatial Data Mining & Information Retrieval √ Intelligent Software Agent Systems and Architectures √ Advanced Soft Computing and Multi-Objective Evolutionary Computation √ Perception-Based Intelligent Decision Systems √ Spiritual-Based Intelligent Systems √ Soft Computing in Industry ApplicationsOther issues related to the Advances of Soft Computing in various applications.
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