• Title/Summary/Keyword: Recommendation Accuracy Improvement

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Accuracy improvement of a collaborative filtering recommender system using attribute of age (목표고객의 연령속성을 이용한 협력적 필터링 추천 시스템의 정확도 향상)

  • Lee, Seog-Hwan;Park, Seung-Hun
    • Journal of the Korea Safety Management & Science
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    • v.13 no.2
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    • pp.169-177
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    • 2011
  • In this paper, the author devised new decision recommendation ordering method of items attributed by age to improve accuracy of recommender system. In conventional recommendation system, recommendation order is decided by high order of preference prediction. However, in this paper, recommendation accuracy is improved by decision recommendation order method that reflect age attribute of target customer and neighborhood in preference prediction. By applying decision recommendation order method to recommender system, recommendation accuracy is improved more than conventional ordering method of recommendation.

A Cascade-hybrid Recommendation Algorithm based on Collaborative Deep Learning Technique for Accuracy Improvement and Low Latency

  • Lee, Hyun-ho;Lee, Won-jin;Lee, Jae-dong
    • Journal of Korea Multimedia Society
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    • v.23 no.1
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    • pp.31-42
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    • 2020
  • During the 4th Industrial Revolution, service platforms utilizing diverse contents are emerging, and research on recommended systems that can be customized to users to provide quality service is being conducted. hybrid recommendation systems that provide high accuracy recommendations are being researched in various domains, and various filtering techniques, machine learning, and deep learning are being applied to recommended systems. However, in a recommended service environment where data must be analyzed and processed real time, the accuracy of the recommendation is important, but the computational speed is also very important. Due to high level of model complexity, a hybrid recommendation system or a Deep Learning-based recommendation system takes a long time to calculate. In this paper, a Cascade-hybrid recommended algorithm is proposed that can reduce the computational time while maintaining the accuracy of the recommendation. The proposed algorithm was designed to reduce the complexity of the model and minimize the computational speed while processing sequentially, rather than using existing weights or using a hybrid recommendation technique handled in parallel. Therefore, through the algorithms in this paper, contents can be analyzed and recommended effectively and real time through services such as SNS environments or shared economy platforms.

The Effects of Social Information on Recommendation Performance According to the Product Involvement Level (제품관여 수준에 따라 소셜 정보가 추천 성능에 미치는 영향)

  • Song, Hee Seok;Joo, Seok Jeong;Lee, Jae Hoon
    • Journal of Information Technology Applications and Management
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    • v.21 no.4_spc
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    • pp.361-379
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    • 2014
  • With the rapid increase of social network usage, there are emerging trends of adopting social information among online users in building recommendation system. This study aims to investigate whether the additional usage of social information can improve recommendation performance in recommendation system and how much the improvement can be different according to the product involvement level. As an experiment result, social information does not affect positively to the recommendation accuracy but affect significantly to the recommendation quality. Also social information contributed more sensitively to the improvement of recommendation quality in high product involvement domain.

Recommendations Based on Listwise Learning-to-Rank by Incorporating Social Information

  • Fang, Chen;Zhang, Hengwei;Zhang, Ming;Wang, Jindong
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.12 no.1
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    • pp.109-134
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    • 2018
  • Collaborative Filtering (CF) is widely used in recommendation field, which can be divided into rating-based CF and learning-to-rank based CF. Although many methods have been proposed based on these two kinds of CF, there still be room for improvement. Firstly, the data sparsity problem still remains a big challenge for CF algorithms. Secondly, the malicious rating given by some illegal users may affect the recommendation accuracy. Existing CF algorithms seldom took both of the two observations into consideration. In this paper, we propose a recommendation method based on listwise learning-to-rank by incorporating users' social information. By taking both ratings and order of items into consideration, the Plackett-Luce model is presented to find more accurate similar users. In order to alleviate the data sparsity problem, the improved matrix factorization model by integrating the influence of similar users is proposed to predict the rating. On the basis of exploring the trust relationship between users according to their social information, a listwise learning-to-rank algorithm is proposed to learn an optimal ranking model, which can output the recommendation list more consistent with the user preference. Comprehensive experiments conducted on two public real-world datasets show that our approach not only achieves high recommendation accuracy in relatively short runtime, but also is able to reduce the impact of malicious ratings.

Performance Evaluation of Personalized Textile Sensibility Design Recommendation System based on the Client-Server Model (클라이언트-서버 모델 기반의 개인화 텍스타일 감성 디자인 추천 시스템의 성능 평가)

  • Jung Kyung-Yong;Kim Jong-Hun;Na Young-Joo;Lee Jung-Hyun
    • Journal of KIISE:Computing Practices and Letters
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    • v.11 no.2
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    • pp.112-123
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    • 2005
  • The latest E-commerce sites provide personalized services to maximize user satisfaction for Internet user The collaborative filtering is an algorithm for personalized item real-time recommendation. Various supplementary methods are provided for improving the accuracy of prediction and performance. It is important to consider these two things simultaneously to implement a useful recommendation system. However, established studies on collaborative filtering technique deal only with the matter of accuracy improvement and overlook the matter of performance. This study considers representative attribute-neighborhood, recommendation textile set, and similarity grouping that are expected to improve performance to the recommendation agent system. Ultimately, this paper suggests empirical applications to verify the adequacy and the validity on this system with the development of Fashion Design Recommendation Agent System (FDRAS ).

Improved Transformer Model for Multimodal Fashion Recommendation Conversation System (멀티모달 패션 추천 대화 시스템을 위한 개선된 트랜스포머 모델)

  • Park, Yeong Joon;Jo, Byeong Cheol;Lee, Kyoung Uk;Kim, Kyung Sun
    • The Journal of the Korea Contents Association
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    • v.22 no.1
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    • pp.138-147
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    • 2022
  • Recently, chatbots have been applied in various fields and have shown good results, and many attempts to use chatbots in shopping mall product recommendation services are being conducted on e-commerce platforms. In this paper, for a conversation system that recommends a fashion that a user wants based on conversation between the user and the system and fashion image information, a transformer model that is currently performing well in various AI fields such as natural language processing, voice recognition, and image recognition. We propose a multimodal-based improved transformer model that is improved to increase the accuracy of recommendation by using dialogue (text) and fashion (image) information together for data preprocessing and data representation. We also propose a method to improve accuracy through data improvement by analyzing the data. The proposed system has a recommendation accuracy score of 0.6563 WKT (Weighted Kendall's tau), which significantly improved the existing system's 0.3372 WKT by 0.3191 WKT or more.

Weight Based Technique For Improvement Of New User Recommendation Performance (신규 사용자 추천 성능 향상을 위한 가중치 기반 기법)

  • Cho, Sun-Hoon;Lee, Moo-Hun;Kim, Jeong-Seok;Kim, Bong-Hoi;Choi, Eui-In
    • The KIPS Transactions:PartD
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    • v.16D no.2
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    • pp.273-280
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    • 2009
  • Today, many services and products that used to be only provided on offline have been being provided on the web according to the improvement of computing environment and the activation of web usage. These web-based services and products tend to be provided to customer by customer's preferences. This paradigm that considers customer's opinions and features in selecting is called personalization. The related research field is a recommendation. And this recommendation is performed by recommender system. Generally the recommendation is made from the preferences and tastes of customers. And recommender system provides this recommendation to user. However, the recommendation techniques have a couple of problems; they do not provide suitable recommendation to new users and also are limited to computing space that they generate recommendations which is dependent on ratings of products by users. Those problems has gathered some continuous interest from the recommendation field. In the case of new users, so similar users can't be classified because in the case of new users there is no rating created by new users. The problem of the limitation of the recommendation space is not easy to access because it is related to moneywise that the cost will be increasing rapidly when there is an addition to the dimension of recommendation. Therefore, I propose the solution of the recommendation problem of new user and the usage of item quality as weight to improve the accuracy of recommendation in this paper.

Interaction-based Collaborative Recommendation: A Personalized Learning Environment (PLE) Perspective

  • Ali, Syed Mubarak;Ghani, Imran;Latiff, Muhammad Shafie Abd
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.9 no.1
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    • pp.446-465
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    • 2015
  • In this modern era of technology and information, e-learning approach has become an integral part of teaching and learning using modern technologies. There are different variations or classification of e-learning approaches. One of notable approaches is Personal Learning Environment (PLE). In a PLE system, the contents are presented to the user in a personalized manner (according to the user's needs and wants). The problem arises when a new user enters the system, and due to the lack of information about the new user's needs and wants, the system fails to recommend him/her the personalized e-learning contents accurately. This phenomenon is known as cold-start problem. In order to address this issue, existing researches propose different approaches for recommendation such as preference profile, user ratings and tagging recommendations. In this research paper, the implementation of a novel interaction-based approach is presented. The interaction-based approach improves the recommendation accuracy for the new-user cold-start problem by integrating preferences profile and tagging recommendation and utilizing the interaction among users and system. This research work takes leverage of the interaction of a new user with the PLE system and generates recommendation for the new user, both implicitly and explicitly, thus solving new-user cold-start problem. The result shows the improvement of 31.57% in Precision, 18.29% in Recall and 8.8% in F1-measure.

Accuracy improvement of a collaborative filtering recommender system (협력적 필터링 추천 시스템의 정확도 향상)

  • Lee, Seog-Hwan;Park, Seung-Hun
    • Journal of the Korea Safety Management & Science
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    • v.12 no.1
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    • pp.127-136
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    • 2010
  • In this paper, the author proposed following two methods to improve the accuracy of the recommender system. First, in order to classify the users more accurately, the author used a EMC(Expanded Moving Center) heuristic algorithm which improved clustering accuracy. Second, the author proposed the Neighborhood-oriented preference prediction method that improved the conventional preference prediction methods, so the accuracy of the recommender system is improved. The test result of the recommender system which adapted the above two methods suggested in this paper was improved the accuracy than the conventional recommendation methods.

The Educational Contents Recommendation System Design based on Collaborative Filtering Method (협업 여과 기반의 교육용 컨텐츠 추천 시스템 설계)

  • Lee, Yong-Jun;Lee, Se-Hoon;Wang, Chang-Jong
    • The Journal of Korean Association of Computer Education
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    • v.6 no.2
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    • pp.147-156
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    • 2003
  • Collaborative Filtering is a popular technology in electronic commerce, which adapt the opinions of entire communities to provide interesting products or personalized resources and items. It has been applied to many kinds of electronic commerce domain since Collaborative Filtering has proven an accurate and reliable tool. But educational application remain limited yet. We design collaborative filtering recommendation system using user's ratings in educational contents recommendation. Also We propose a method of similarity compensation using user's information for improvement of recommendation accuracy. The proposed method is more efficient than the traditional collaborative filtering method by experimental comparisons of mean absolute error(MAE) and reciever operating characteristics(ROC) values.

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