• 제목/요약/키워드: Recommendation Techniques

검색결과 205건 처리시간 0.032초

챗봇 기반의 개인화 패션 추천 서비스 향상을 위한 사용자-제품 속성 제안 (Proposal for User-Product Attributes to Enhance Chatbot-Based Personalized Fashion Recommendation Service)

  • 안효선;김성훈;최예림
    • 패션비즈니스
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    • 제27권3호
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    • pp.50-62
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    • 2023
  • The e-commerce fashion market has experienced a remarkable growth, leading to an overwhelming availability of shared information and numerous choices for users. In light of this, chatbots have emerged as a promising technological solution to enhance personalized services in this context. This study aimed to develop user-product attributes for a chatbot-based personalized fashion recommendation service using big data text mining techniques. To accomplish this, over one million consumer reviews from Coupang, an e-commerce platform, were collected and analyzed using frequency analyses to identify the upper-level attributes of users and products. Attribute terms were then assigned to each user-product attribute, including user body shape (body proportion, BMI), user needs (functional, expressive, aesthetic), user TPO (time, place, occasion), product design elements (fit, color, material, detail), product size (label, measurement), and product care (laundry, maintenance). The classification of user-product attributes was found to be applicable to the knowledge graph of the Conversational Path Reasoning model. A testing environment was established to evaluate the usefulness of attributes based on real e-commerce users and purchased product information. This study is significant in proposing a new research methodology in the field of Fashion Informatics for constructing the knowledge base of a chatbot based on text mining analysis. The proposed research methodology is expected to enhance fashion technology and improve personalized fashion recommendation service and user experience with a chatbot in the e-commerce market.

시맨틱 웹에서 개인화 프로파일을 이용한 콘텐츠 추천 검색 시스템 (Contents Recommendation Search System using Personalized Profile on Semantic Web)

  • 송창우;김종훈;정경용;류중경;이정현
    • 한국콘텐츠학회논문지
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    • 제8권1호
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    • pp.318-327
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    • 2008
  • 정보기술의 발전과 인터넷 사용의 증가로 이용가능한 정보들의 양이 폭발적으로 증가한다. 콘텐츠 추천 시스템은 사용자가 원하지 않는 정보를 필터링하고 유용한 정보를 추천하는 서비스를 제공한다. 기존의 추천 시스템은 데이터마이닝 기법으로 웹 접속 기록 및 유형과 사용자가 요구하는 정보를 서비스 제공자 측면에서 분석하여 콘텐츠를 제공한다. 사용자의 선호도와 생활패턴 등의 사용자 측면에서의 정보들의 표현이 어려웠기 때문에 제한된 서비스를 제공할 수 밖에 없었다. 시맨틱 웹 기술은 이미지, 문서 등의 모든 객체를 대상으로 목적에 맞는 정보를 수집, 가공, 응용할 수 있도록 데이터 간에 잘 정의된 의미 있는 관계를 만들 수 있다. 본 논문에서는 시맨틱 웹 환경에서 개인화 프로파일을 동적으로 갱신하여 반영할 수 있는 콘텐츠 추천 검색 시스템을 제안한다. 개인화 프로파일은 프로파일의 특징을 담고 있는 컬렉터, 다양한 컬렉터들로부터 프로파일을 수집하는 수집기, 프로파일 특성에 기반한 고유의 프로파일 컬렉터를 해석하는 해석기로 구성된다. 개인화 모듈은 콘텐츠 추천 서버에서 개인화 프로파일과 주기적으로 동기화할 수 있도록 도와준다. 추천 콘텐츠로 음악을 선택하여 서비스 시나리오에 따라 개인화 프로파일이 콘텐츠 추천 서버에 전달되어 사용자의 선호도와 생활패턴이 반영된 추천리스트를 제공하는지 실험한다.

반려동물 사료 추천시스템을 위한 유사성 측정 알고리즘에 대한 연구 (A Study of Similarity Measure Algorithms for Recomendation System about the PET Food)

  • 김삼택
    • 한국융합학회논문지
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    • 제10권11호
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    • pp.159-164
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    • 2019
  • ICT 기술 발전으로 강아지와 고양이등 반려동물 돌보기와 건강에 대한 관심도가 높아지고 있다. 본 논문에서는 반려동물 산업의 다양한 분야에 활용될 수 있도록 반려동물 사료의 성분 데이터를 기반으로 군집분석을 수행하고 적합한 서비스에 대해 고찰한다. 군집분석을 위해 시중에서 유통되고 있는 300여 개의 강아지 및 고양이 펫푸드를 대상으로 성분별 상관관계를 분석하여 유사성을 측정하며, Hierarchical, K-Means, Partitioning around medoids(PAM), Density-based, Mean-Shift 등의 다양한 클러스터링 기법을 활용하여 군집화 하여 분석한다. 또한 반려동물의 개인화 추천시스템도 제안한다. 본 논문의 연구 결과는 반려동물을 대상으로 한 사료 추천시스템 등의 맞춤형 개인화 서비스에 활용할 수 있다.

SaaS application mashup based on High Speed Message Processing

  • Chen, Zhiguo;Kim, Myoungjin;Cui, Yun
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제16권5호
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    • pp.1446-1465
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    • 2022
  • Diversified SaaS applications allow users more choices to use, according to their own preferences. However, the diversification of SaaS applications also makes it impossible for users to choose the best one. Furthermore, users can't take advantage of the functionality between SaaS applications. In this paper, we propose a platform that provides an SaaS mashup service, by extracting interoperable service functions from SaaS-based applications that independent vendors deploy and supporting a customized service recommendation function through log data binding in the cloud environment. The proposed SaaS mashup service platform consists of a SaaS aggregation framework and a log data binding framework. Each framework was concreted by using Apache Kafka and rule matrix-based recommendation techniques. We present the theoretical basis of implementing the high-performance message-processing function using Kafka. The SaaS mashup service platform, which provides a new type of mashup service by linking SaaS functions based on the above technology described, allows users to combine the required service functions freely and access the results of a rich service-utilization experience, using the SaaS mashup function. The platform developed through SaaS mashup service technology research will enable various flexible SaaS services, expected to contribute to the development of the smart-contents industry and the open market.

유비쿼터스 환경에서 소셜 검색을 위한 레벨화된 데이터 처리 기법 (Levelized Data Processing Method for Social Search in Ubiquitous Environment)

  • 김성림;권준희
    • 디지털산업정보학회논문지
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    • 제10권1호
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    • pp.61-71
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    • 2014
  • Social networking services have changed the way people communicate. Rapid growth of information generated by social networking services requires effective search methods to give useful results. Over the last decade, social search methods have rapidly evolved. Traditional techniques become unqualified because they ignore social relation data. Existing social recommendation approaches consider social network structure, but social context has not been fully considered. Especially, the friend recommendation is an important feature of SNSs. People tend to trust the opinions of friends they know rather than the opinions of strangers. In this paper, we propose a levelized data processing method for social search in ubiquitous environment. We study previous researches about social search methods in ubiquitous environment. Our method is a new paradigm of levelelized data processing method which can utilize information in social networks, using location and friendship weight. Several experiments are performed and the results verify that the proposed method's performance is better than other existing method.

온라인 학습을 위한 학생 피드백 분석 기반 콘텐츠 재구성 추천 프레임워크 (Restructure Recommendation Framework for Online Learning Content using Student Feedback Analysis)

  • 최자령;김수인;임순범
    • 한국멀티미디어학회논문지
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    • 제21권11호
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    • pp.1353-1361
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    • 2018
  • With the availability of real-time educational data collection and analysis techniques, the education paradigm is shifting from educator-centric to data-driven lectures. However, most offline and online education frameworks collect students' feedback from question-answering data that can summarize their understanding but requires instructor's attention when students need additional help during lectures. This paper proposes a content restructure recommendation framework based on collected student feedback. We list the types of student feedback and implement a web-based framework that collects both implicit and explicit feedback for content restructuring. With a case study of four-week lectures with 50 students, we analyze the pattern of student feedback and quantitatively validate the effect of the proposed content restructuring measured by the level of student engagement.

모바일 환경에서의 상황인식 기반 사용자 감성인지를 통한 개인화 서비스 (Personalized Service Based on Context Awareness through User Emotional Perception in Mobile Environment)

  • 권일경;이상용
    • 디지털융복합연구
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    • 제10권2호
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    • pp.287-292
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    • 2012
  • 본 논문에서는 모바일환경에서의 사용자 감정인지를 통한 개인화 서비스 지원에 필요한 위치기반 센싱 데이터의 전처리 기법과 사용자 감정 데이터의 구축 및 전처리를 위한 V-A 감정 모델에서의 감정 데이터 전처리 기법에 대하여 연구한다. 이를 위하여 그래뉼러 컨텍스트 트리 및 스트링 매칭 기반의 감정 패턴 매칭 기법을 사용한다. 또한 상황 인지를 통한 개인화 서비스를 위해 확률 기반 추론을 이용한 상황 인식 및 개인화 서비스 추천 기법에 대하여 연구한다.

Recommendation of Optimal Treatment Method for Heart Disease using EM Clustering Technique

  • Jung, Yong Gyu;Kim, Hee Wan
    • International Journal of Advanced Culture Technology
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    • 제5권3호
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    • pp.40-45
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    • 2017
  • This data mining technique was used to extract useful information from percutaneous coronary intervention data obtained from the US public data homepage. The experiment was performed by extracting data on the area, frequency of operation, and the number of deaths. It led us to finding of meaningful correlations, patterns, and trends using various algorithms, pattern techniques, and statistical techniques. In this paper, information is obtained through efficient decision tree and cluster analysis in predicting the incidence of percutaneous coronary intervention and mortality. In the cluster analysis, EM algorithm was used to evaluate the suitability of the algorithm for each situation based on performance tests and verification of results. In the cluster analysis, the experimental data were classified using the EM algorithm, and we evaluated which models are more effective in comparing functions. Using data mining technique, it was identified which areas had effective treatment techniques and which areas were vulnerable, and we can predict the frequency and mortality of percutaneous coronary intervention for heart disease.

개선된 데이터 마이닝 기술에 의한 웹 기반 지능형 추천시스템 구축 (Development of Web-based Intelligent Recommender Systems using Advanced Data Mining Techniques)

  • 김경재;안현철
    • Journal of Information Technology Applications and Management
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    • 제12권3호
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    • pp.41-56
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    • 2005
  • Product recommender system is one of the most popular techniques for customer relationship management. In addition, collaborative filtering (CF) has been known to be one of the most successful recommendation techniques in product recommender systems. However, CF has some limitations such as sparsity and scalability problems. This study proposes hybrid cluster analysis and case-based reasoning (CBR) to address these problems. CBR may relieve the sparsity problem because it recommends products using customer profile and transaction data, but it may still give rise to scalability problem. Thus, this study uses cluster analysis to reduce search space prior to CBR for scalability Problem. For cluster analysis, this study employs hybrid genetic and K-Means algorithms to avoid possibility of convergence in local minima of typical cluster analyses. This study also develops a Web-based prototype system to test the superiority of the proposed model.

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Enhancing Recommender Systems by Fusing Diverse Information Sources through Data Transformation and Feature Selection

  • Thi-Linh Ho;Anh-Cuong Le;Dinh-Hong Vu
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제17권5호
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    • pp.1413-1432
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    • 2023
  • Recommender systems aim to recommend items to users by taking into account their probable interests. This study focuses on creating a model that utilizes multiple sources of information about users and items by employing a multimodality approach. The study addresses the task of how to gather information from different sources (modalities) and transform them into a uniform format, resulting in a multi-modal feature description for users and items. This work also aims to transform and represent the features extracted from different modalities so that the information is in a compatible format for integration and contains important, useful information for the prediction model. To achieve this goal, we propose a novel multi-modal recommendation model, which involves extracting latent features of users and items from a utility matrix using matrix factorization techniques. Various transformation techniques are utilized to extract features from other sources of information such as user reviews, item descriptions, and item categories. We also proposed the use of Principal Component Analysis (PCA) and Feature Selection techniques to reduce the data dimension and extract important features as well as remove noisy features to increase the accuracy of the model. We conducted several different experimental models based on different subsets of modalities on the MovieLens and Amazon sub-category datasets. According to the experimental results, the proposed model significantly enhances the accuracy of recommendations when compared to SVD, which is acknowledged as one of the most effective models for recommender systems. Specifically, the proposed model reduces the RMSE by a range of 4.8% to 21.43% and increases the Precision by a range of 2.07% to 26.49% for the Amazon datasets. Similarly, for the MovieLens dataset, the proposed model reduces the RMSE by 45.61% and increases the Precision by 14.06%. Additionally, the experimental results on both datasets demonstrate that combining information from multiple modalities in the proposed model leads to superior outcomes compared to relying on a single type of information.