• Title/Summary/Keyword: 개인화 추천

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An Analysi s of Performance Improvement Algorithm for Personalized Recommender System (개인화 추천시스템의 성능 향상 적용 알고리즘 분석)

  • Yun Sujin;Yoon Heebyung
    • Proceedings of the Korean Institute of Intelligent Systems Conference
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    • 2005.04a
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    • pp.181-184
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    • 2005
  • 무수히 많은 정보 중에서 특정 사용자에게 가장 유용할 것으로 판단되는 정보를 추천하여 제공함으로써 특정 사용자의 편의를 돕는 시스템이 추천시스템이다. 이러한 추천시스템에 성공적으로 적용된 알고리즘이 협력적 필터링이며 이것은 다른 사용자로부터 먼저 평가된 웹 문서를 제공받아 이를 축적하고 다시 사용자에게 환원하는 알고리즘이다. 하지만 이 알고리즘은 초기평가, 희소성, 확장성 둥의 문제점을 내포하고 있다. 따라서 본 논문은 이러한 문제점을 해결하고 성능 향상을 하기 위해 적용된 개인화 추천시스템 관련 최신 알고리즘들을 비교하고 분석한 결과를 제시한다. 이를 위해 먼저 최근에 발표된 협력적 필터링과 최근접 이웃 알고리즘, 인공 지능기술을 이용한 알고리즘, 군집화 알고리즘 둥 각각에 대한 기술적 분석 결과를 수행한다. 그런 후 이들 다양한 알고리즘들의 조합을 통한 성능 향상 결과에 대한 비교분석과 각각의 조합에 대한 장단점 분석 결과도 또한 제시한다.

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Design and Evaluation of a Personalized Search Service Model Based on Web Portal User Activities (웹 포털 이용자 로그 데이터에 기반한 개인화 검색 서비스 모형의 설계 및 평가)

  • Lee, So-Young;Chung, Young-Mee
    • Journal of the Korean Society for information Management
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    • v.23 no.4 s.62
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    • pp.179-196
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    • 2006
  • This study proposes an expanded model of personalized search service based on community activities on a Korean Web portal. The model is composed of defining subject categories of users, providing personalized search results, and recommending additional subject categories and queries. Several experiments were performed to verify the feasibility and effectiveness of the proposed model. It was found that users' activities on community services provide valuable data for identifying their Interests, and the personalized search service increases users' satisfaction.

A Study of Deep Learning-based Personalized Recommendation Service for Solving Online Hotel Review and Rating Mismatch Problem (온라인 호텔 리뷰와 평점 불일치 문제 해결을 위한 딥러닝 기반 개인화 추천 서비스 연구)

  • Qinglong Li;Shibo Cui;Byunggyu Shin;Jaekyeong Kim
    • Information Systems Review
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    • v.23 no.3
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    • pp.51-75
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    • 2021
  • Global e-commerce websites offer personalized recommendation services to gain sustainable competitiveness. Existing studies have offered personalized recommendation services using quantitative preferences such as ratings. However, offering personalized recommendation services using only quantitative data has raised the problem of decreasing recommendation performance. For example, a user gave a five-star rating but wrote a review that the user was unsatisfied with hotel service and cleanliness. In such cases, has problems where quantitative and qualitative preferences are inconsistent. Recently, a growing number of studies have considered review data simultaneously to improve the limitations of existing personalized recommendation service studies. Therefore, in this study, we identify review and rating mismatches and build a new user profile to offer personalized recommendation services. To this end, we use deep learning algorithms such as CNN, LSTM, CNN + LSTM, which have been widely used in sentiment analysis studies. And extract sentiment features from reviews and compare with quantitative preferences. To evaluate the performance of the proposed methodology in this study, we collect user preference information using real-world hotel data from the world's largest travel platform TripAdvisor. Experiments show that the proposed methodology in this study outperforms the existing other methodologies, using only existing quantitative preferences.

A Study on Design and Implementation of Personalized Information Recommendation System based on Apriori Algorithm (Apriori 알고리즘 기반의 개인화 정보 추천시스템 설계 및 구현에 관한 연구)

  • Kim, Yong
    • Journal of the Korean BIBLIA Society for library and Information Science
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    • v.23 no.4
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    • pp.283-308
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    • 2012
  • With explosive growth of information by recent advancements in information technology and the Internet, users need a method to acquire appropriate information. To solve this problem, an information retrieval and filtering system was developed as an important tool for users. Also, users and service providers are growing more and more interested in personalized information recommendation. This study designed and implemented personalized information recommendation system based on AR as a method to provide positive information service for information users as a method to provide positive information service. To achieve the goal, the proposed method overcomes the weaknesses of existing systems, by providing a personalized recommendation method for contents that works in a large-scaled data and user environment. This study based on the proposed method to extract rules from log files showing users' behavior provides an effective framework to extract Association Rule.

Personalized Recommendation Considering Item Confidence in E-Commerce (온라인 쇼핑몰에서 상품 신뢰도를 고려한 개인화 추천)

  • Choi, Do-Jin;Park, Jae-Yeol;Park, Soo-Bin;Lim, Jong-Tae;Song, Je-O;Bok, Kyoung-Soo;Yoo, Jae-Soo
    • The Journal of the Korea Contents Association
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    • v.19 no.3
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    • pp.171-182
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    • 2019
  • As online shopping malls continue to grow in popularity, various chances of consumption are provided to customers. Customers decide the purchase by exploiting information provided by shopping malls such as the reviews of actual purchasing users, the detailed information of items, and so on. It is required to provide objective and reliable information because customers have to decide on their own whether the massive information is credible. In this paper, we propose a personalized recommendation method considering an item confidence to recommend reliable items. The proposed method determines user preferences based on various behaviors for personalized recommendation. We also propose an user preference measurement that considers time weights to apply the latest propensity to consume. Finally, we predict the preference score of items that have not been used or purchased before, and we recommend items that have highest scores in terms of both the predicted preference score and the item confidence score.

A Model to Infer Users' Behavior Patterns for Personalized Recommendation Service based Context-Awareness (컨텍스트 인식 기반 개인화 추천 서비스를 위한 사용자 행동패턴 추론 모델)

  • Seo, Hyo-Seok;Lee, Sang-Yong
    • Journal of Digital Convergence
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    • v.10 no.2
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    • pp.293-297
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    • 2012
  • In order to provide with personalized recommendation service in context-awareness environment, the collected context data should be analyzed fast and the objective of user should be able to inferred effectively. But, the context collected from the mobile devices is not suitable for applying the existing inference algorithms as they are due to the omission or uncertainty of information and the efficient algorithms are required for mobile environment. In this paper, the behavior pattern was classified using naive bayes classification for minimize the loss caused by the omission or error of information. And pattern matching was used to effectively learn of the users inclination and infer the behavior purpose. The accuracy of the suggested inference model was evaluated by applying to the application recommendation service in the smart phones.

PReAmacy: A Personalized Recommendation Algorithm considering Contents and Intimacy between Users in Social Network Services (PReAmacy: 소셜 네트워크 서비스에서 콘텐츠와 사용자의 친밀도를 고려한 개인화 추천 알고리즘)

  • Seo, Young-Duk;Kim, Jeong-Dong;Baik, Doo-Kwon
    • Journal of KIISE:Databases
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    • v.41 no.4
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    • pp.209-216
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    • 2014
  • Various characteristics of social network contents such as real-time, people relationship and big data can help to improve personalized recommender systems. Among them, 'people relationship' is a key factor of recommendation, so many personalized recommender systems utilizing it have been proposed. However, existing researches can not reflect personal tendency and are unable to provide precise recommendations in various domains, because they do not consider intimacy among people. In this paper, to solve these problems, we propose PReAmacy, a Personalized Recommendation Algorithm, considering intimacy among users and various characteristics of social network contents. Our experimental results indicate that not only the precision of PReAmacy is higher than that of existing algorithms, but intimacy is of great importance in PReAmacy.

Personalized Travel Path Recommendation Scheme on Social Media (소셜 미디어 상에서 개인화된 여행 경로 추천 기법)

  • Aniruddha, Paul;Lim, Jongtae;Bok, Kyoungsoo;Yoo, Jaesoo
    • The Journal of the Korea Contents Association
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    • v.19 no.2
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    • pp.284-295
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    • 2019
  • In the recent times, a personalized travel path recommendation based on both travelogues and community contributed photos and the heterogeneous meta-data (tags, geographical locations, and date taken) which are associated with photos have been studied. The travellers using social media leave their location history, in the form of paths. These paths can be bridged for acquiring information, required, for future recommendation, for the future travellers, who are new to that location, providing all sort of information. In this paper, we propose a personalized travel path recommendation scheme, based on social life log. By taking advantage, of two kinds of social media, such as travelogue and community contributed photos, the proposed scheme, can not only be personalized to user's travel interest, but also be able to recommend, a travel path rather than individual Points of Interest (POIs). The proposed personalized travel route recommendation method consists of two steps, which are: pruning POI pruning step and creating travel path step. In the POI pruning step, candidate paths are created by the POI derived. In the creating travel path step, the proposed scheme creates the paths considering the user's interest, cost, time, season of the topic for more meaningful recommendation.

Personalized Resource Recommender System Based on Context-Aware in Ubiquitous Environments (유비쿼터스 환경에 상황 인지 기반 개인화 자원 추천 시스템)

  • Park, Jong-Hyun;Kang, Sun-Hee;Kang, Ji-Hoon
    • Proceedings of the Korean Information Science Society Conference
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    • 2008.06c
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    • pp.95-99
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    • 2008
  • 유비쿼터스 환경에서 사용자는 개인용 디바이스를 이용하여 보이지 않는 수많은 자원들과 서로 연결하여 원하는 서비스를 제공 받기를 원한다. 이러한 요구사항을 만족시키기 위하여 유비쿼터스 지능 공간에 존재하는 자원들 사이의 공유가 필요하며 이를 효율적으로 수행하기 위한 연구는 새로운 연구 주제이다. 그러나 동일한 환경이라 할 지라도 각 사용자들의 상황은 서로 다르며 개인적인 성향 역시 다양하다. 그러므로 동일한 공간에서 동일한 서비스를 원하는 사용자들이라 할 지라도 현재의 상황과 사용자 개개인의 개성에 따라 필요로 하는 자원이 다른 것이 현실이다. 그러므로 본 논문에서는 사용자의 상황을 인지하여 맞춤형 자원을 추천하는 시스템을 개발한다. 추천 시스템은 사용자의 상황을 인지하기 위한 방법으로 온톨로지 기반 추론을 수행하고, 개인화 추천 서비스를 제공하기 위하여 규칙들 이용한 규칙 기반 추론 방법을 수행한다.

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A Study on the Development and Evaluation of Personalized Book Recommendation Systems in University Libraries Based on Individual Loan Records (대출 기록에 기초한 대학 도서관 도서 개인화 추천시스템 개발 및 평가에 관한 연구)

  • Hong, Yeonkyoung;Jeon, Seoyoung;Choi, Jaeyoung;Yang, Heeyoon;Han, Chaeeun;Zhu, Yongjun
    • Journal of the Korean Society for information Management
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    • v.38 no.2
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    • pp.113-127
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    • 2021
  • The purpose of this study is to propose a personalized book recommendation system to promote the use of university libraries. In particular, unlike many recommended services that are based on existing users' preferences, this study proposes a method that derive evaluation metrics using individual users' book rental history and tendencies, which can be an effective alternative when users' preferences are not available. This study suggests models using two matrix decomposition methods: Singular Value Decomposition(SVD) and Stochastic Gradient Descent(SGD) that recommend books to users in a way that yields an expected preference score for books that have not yet been read by them. In addition, the model was implemented using a user-based collaborative filtering algorithm by referring to book rental history of other users that have high similarities with the target user. Finally, user evaluation was conducted for the three models using the derived evaluation metrics. Each of the three models recommended five books to users who can either accept or reject the recommendations as the way to evaluate the models.