• Title/Summary/Keyword: 협력 필터링 알고리즘

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Apparel Coordination based on Human Sensibility Ergonomics using Preference of Female Students (여학생의 선호도를 이용한 감성공학적 의상 코디)

  • Cho, Dong-Ju;Han, Kyung-Su;Hwang, Kyung-Hee;Chung, Kyung-Young;Lee, Jung-Hyun
    • Proceedings of the Korea Contents Association Conference
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    • 2007.11a
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    • pp.146-150
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    • 2007
  • As the internet has become a mainstream information tool, searching answers has become crucial as well. The collaborative filtering estimates and recommends items based upon the similar preference. However, because it refers to partial users information who have the similar preference, it tends to ignore the rest. In this paper, we propose the apparel coordination based on human sensibility ergonomics using the female students preference. This proposed method calculates evaluation values using fitness function based genetic algorithm, and gathers users through a-cut. Finally, the collaborative filtering recommends apparel coordination. To estimate the performance, the suggested method is compared with FAIMS-I, FAIMS-II in the questionnaire dataset.

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Analysis of Preference Criteria for Personalized Web Search (개인화된 웹 검색을 위한 선호 기준 분석)

  • Lee, Soo-Jung
    • The Journal of Korean Association of Computer Education
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    • v.13 no.1
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    • pp.45-52
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    • 2010
  • With rapid increase in the number of web documents, the problem of information overload in Internet search is growing seriously. In order to improve web search results, previous research studies employed user queries/preferred words and the number of links in the web documents. In this study, performance of the search results exploiting these two criteria is examined and other preference criteria for web documents are analyzed. Experimental results show that personalized web search results employing queries and preferred words yield up to 1.7 times better performance over the current search engine and that the search results using the number of links gives up to 1.3 times better performance. Although it is found that the first of the user's preference criteria for web documents is the contents of the document, readability and images in the document are also given a large weight. Therefore, performance of web search personalization algorithms will be greatly improved if they incorporate objective data reflecting each user's characteristics in addition to the number of queries and preferred words.

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Analysis of changes in artificial intelligence image of elementary school students applying cognitive modeling-based artificial intelligence education program (인지 모델링기반 인공지능 교육 프로그램을 적용한 초등학생의 인공지능 이미지 변화 분석)

  • Kim, Tae-ryeong;Han, Sun-gwan
    • Journal of The Korean Association of Information Education
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    • v.24 no.6
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    • pp.573-584
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    • 2020
  • This study is about the development of AI algorithm education program using cognition modeling to positively improve students' image on AI. First, we analyzed the concept of user-based collaborative filtering and developed the education program using the cognition modeling method. We checked the adequacy of program through the expert validity test. Both CVR values for the content development method of cognitive modeling and the developed program showed validity above .80. We applied the developed program to elementary school students in class. The test was conducted using a semantic discrimination to examine changes in students' perception of artificial intelligence before and after. We were able to confirm that the students' AI images were significant positive change in 12 of the 23 words in the adjective pair.

Clustering-Based Recommendation Using Users' Preference (사용자 선호도를 사용한 군집 기반 추천 시스템)

  • Kim, Younghyun;Shin, Won-Yong
    • Journal of the Korea Institute of Information and Communication Engineering
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    • v.21 no.2
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    • pp.277-284
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    • 2017
  • In a flood of information, most users will want to get a proper recommendation. If a recommender system fails to give appropriate contents, then quality of experience (QoE) will be drastically decreased. In this paper, we propose a recommender system based on the intra-cluster users' item preference for improving recommendation accuracy indices such as precision, recall, and F1 score. To this end, first, users are divided into several clusters based on the actual rating data and Pearson correlation coefficient (PCC). Afterwards, we give each item an advantage/disadvantage according to the preference tendency by users within the same cluster. Specifically, an item will be received an advantage/disadvantage when the item which has been averagely rated by other users within the same cluster is above/below a predefined threshold. The proposed algorithm shows a statistically significant performance improvement over the item-based collaborative filtering algorithm with no clustering in terms of recommendation accuracy indices such as precision, recall, and F1 score.

Users' Moving Patterns Analysis for Personalized Product Recommendation in Offline Shopping Malls (오프라인 쇼핑몰에서 개인화된 상품 추천을 위한 사용자의 이동패턴 분석)

  • Choi, Young-Hwan;Lee, Sang-Yong
    • Journal of the Korean Institute of Intelligent Systems
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    • v.16 no.2
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    • pp.185-190
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    • 2006
  • Most systems in ubiquitous computing analyze context information of users which have similar propensity with demographics methods and collaborative filtering to provide personalized recommendation services. The systems have mostly used static context information such as sex, age, job, and purchase history. However the systems have limitation to analyze users' propensity accurately and to provide personalized recommendation services in real-time, because they have difficulty in considering users situation as moving path. In this paper we use users' moving path of dynamic context to consider users situation. For the prediction accuracy we complete with a path completion algorithm to moving path which is inputted to RSOM. We train the moving path to be completed by RSOM, analyze users' moving pattern and predict a future moving path. Then we recommend the nearest product on the prediction path with users' high preference in real-time. As the experimental result, MAE is lower than 0.5 averagely and we confirmed our method can predict users moving path correctly.