• Title/Summary/Keyword: Cold start problem

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Collaborative Tag-based Filtering for Recommender Systems (효과적인 추천 시스템을 위한 협업적 태그 기반의 여과 기법)

  • Yeon, Cheol;Ji, Ae-Ttie;Kim, Heung-Nam;Jo, Geun-Sik
    • Journal of Intelligence and Information Systems
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    • v.14 no.2
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    • pp.157-177
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    • 2008
  • Even in a single day, an enormous amount of content including digital videos, posts, photographs, and wikis are generated on the web. It's getting more difficult to recommend to a user what he/she prefers among these contents because of the difficulty of automatically grasping of content's meanings. CF (Collaborative Filtering) is one of useful methods to recommend proper content to a user under these situations because the filtering process is only based on historical information about whether or not a target user has preferred an item before. Collaborative Tagging is the process that allows many users to annotate content with descriptive tags. Recommendation using tags can partially improve, such as the limitations of CF, the sparsity and cold-start problem. In this research, a CF method with user-created tags is proposed. Collaborative tagging is employed to grasp and filter users' preferences for items. Empirical demonstrations using real dataset from del.icio.us show that our algorithm obtains improved performance, compared with existing works.

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Hybrid Recommendation System of Qualitative Information Based on Content Similarity and Social Affinity Analysis (컨텐츠 유사도와 사회적 친화도 분석 기법을 혼합한 가치정보의 추천 시스템)

  • Kim, Myeonghun;Kim, Sangwook
    • Journal of KIISE
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    • v.43 no.11
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    • pp.1188-1200
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    • 2016
  • Recommendation systems play a significant role in providing personalized information to users, with enhanced satisfaction and reduced information overload. Since the mid-1990s, many studies have been conducted on recommendation systems, but few have examined the recommendations of information from people in the online social networking environment. In this paper, we present a hybrid recommendation method that combines both the traditional system of content-based techniques to improve specialization, and the recently developed system of social network-based techniques to best overcome a few limitations of the traditional techniques, such as the cold-start problem. By suggesting a state-of-the-art method, this research will help users in online social networks view more personalized information with less effort than before.

Using Genre Rating Information for Similarity Estimation in Collaborative Filtering

  • Lee, Soojung
    • Journal of the Korea Society of Computer and Information
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    • v.24 no.12
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    • pp.93-100
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    • 2019
  • Similarity computation is very crucial to performance of memory-based collaborative filtering systems. These systems make use of user ratings to recommend products to customers in online commercial sites. For better recommendation, most similar users to the active user need to be selected for their references. There have been numerous similarity measures developed in literature, most of which suffer from data sparsity or cold start problems. This paper intends to extract preference information as much as possible from user ratings to compute more reliable similarity even in a sparse data condition, as compared to previous similarity measures. We propose a new similarity measure which relies not only on user ratings but also on movie genre information provided by the dataset. Performance experiments of the proposed measure and previous relevant measures are conducted to investigate their performance. As a result, it is found that the proposed measure yields better or comparable achievements in terms of major performance metrics.

A Hybrid Recommendation Method based on Attributes of Items and Ratings (항목 속성과 평가 정보를 이용한 혼합 추천 방법)

  • Kim Byeong Man;Li Qing
    • Journal of KIISE:Software and Applications
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    • v.31 no.12
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    • pp.1672-1683
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    • 2004
  • Recommender system is a kind of web intelligence techniques to make a daily information filtering for people. Researchers have developed collaborative recommenders (social recommenders), content-based recommenders, and some hybrid systems. In this paper, we introduce a new hybrid recommender method - ICHM where clustering techniques have been applied to the item-based collaborative filtering framework. It provides a way to integrate the content information into the collaborative filtering, which contributes to not only reducing the sparsity of data set but also solving the cold start problem. Extensive experiments have been conducted on MovieLense data to analyze the characteristics of our technique. The results show that our approach contributes to the improvement of prediction quality of the item-based collaborative filtering, especially for the cold start problem.

Recommending Talks at International Research Conferences (국제학술대회 참가자들을 위한 정보추천 서비스)

  • Lee, Danielle H.
    • Journal of Intelligence and Information Systems
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    • v.18 no.3
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    • pp.13-34
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    • 2012
  • The Paper Explores The Problem Of Recommending Talks To Attend At International Research Conferences. When Researchers Participate In Conferences, Finding Interesting Talks To Attend Is A Real Challenge. Given That Several Presentation Sessions And Social Activities Are Typically Held At A Time, And There Is Little Time To Analyze All Alternatives, It Is Easy To Miss Important Talks. In Addition, Compared With Recommendations Of Products Such As Movies, Books, Music, Etc. The Recipients Of Talk Recommendations (i.e. Conference Attendees) Already Formed Their Own Research Community On The Center Of The Conference Topics. Hence, Recommending Conference Talks Contains Highly Social Context. This Study Suggests That This Domain Would Be Suitable For Social Network-Based Recommendations. In Order To Find Out The Most Effective Recommendation Approach, Three Sources Of Information Were Explored For Talk Recommendation-Whateach Talk Is About (Content), Who Scheduled The Talks (Collaborative), And How The Users Are Connected Socially (Social). Using These Three Sources Of Information, This Paper Examined Several Direct And Hybrid Recommendation Algorithms To Help Users Find Interesting Talks More Easily. Using A Dataset Of A Conference Scheduling System, Conference Navigator, Multiple Approaches Ranging From Classic Content-Based And Collaborative Filtering Recommendations To Social Network-Based Recommendations Were Compared. As The Result, For Cold-Start Users Who Have Insufficient Number Of Items To Express Their Preferences, The Recommendations Based On Their Social Networks Generated The Best Suggestions.

Modifying Sparse Data for Collaborative Filtering (협동적 여과를 위한 희소 데이터 변형 기법)

  • Kim, Hyung-Il;Kim, Jun-Tae
    • Proceedings of the Korean Information Science Society Conference
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    • 2005.07b
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    • pp.610-612
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    • 2005
  • 협동적 여과를 이용한 추천 시스템은 데이터의 희소성 문제(sparseness problem)와 초기 추천 문제 (cold-start problem)에 대해 취약점을 가지고 있다. 협동적 여과를 이용한 추천 시스템에서 사용하는 선호도 데이터에 아이템들의 전체 수량에 비해 매우 적은 양의 아이템 선호도만 존재한다면 사용자들의 유사도 측정에 문제를 발생시켜 극단적인 경우엔 협동적 추천이 불가능할 경우가 발생한다. 이와 같은 문제는 선호도 데이터에 나타난 아이템들의 총수에 비해 사용자가 선호(구매)한 아이템이 극히 적은 수량으로 존재하기 때문이며 새로운 사용자의 경우에는 아이템 선호도 정보가 전혀 없기 때문에 유사 사용자를 추출하지 못하여 아이템을 전혀 추천할 수 없는 문제가 발생한다. 본 논문에서는 희소성이 높은 선호도 데이터를 희소하지 않은 상태로 변형하는 희소 데이터 변형 기법을 제안한다. 희소 데이터 변형 기법은 희소데이터에 나타난 사용자와 아이템의 추가 속성 정보의 확률분포를 이용하여 알려지지 않은 선호도 값을 예측함으로써 희소성이 높은 선호도 데이터를 변경하고, 변경된 선호도 데이터를 협동적 추천에 적용하여 추천 성능을 향상시킨다. 이와 같은 선호도 데이터 변경 기법을 데이터 블러링(data blurring)이라 한다. 몇가지 실험 결과를 통해 제안된 기법의 효과를 확인하였다.

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A Movie Recommendation System based on Fuzzy-AHP with User Preference and Partition Algorithm (사용자 선호도와 군집 알고리즘을 이용한 퍼지-계층적 분석 기법 기반 영화 추천 시스템)

  • Oh, Jae-Taek;Lee, Sang-Yong
    • Journal of Digital Convergence
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    • v.15 no.11
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    • pp.425-432
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    • 2017
  • The current recommendation systems have problems including the difficulty of figuring out whether they recommend items that actual users have preference for or have simple interest in, the scarcity of data to recommend proper items due to the extremely small number of users, and the cold-start issue of the dropping system performance to recommend items that can satisfy users according to the influx of new users. In an effort to solve these problems, this study implemented a movie recommendation system to ensure user satisfaction by using the Fuzzy-Analytic Hierarchy Process, which can reflect uncertain situations and problems, and the data partition algorithm to group similar items among the given ones. The data of a survey on movie preference with 61 users was applied to the system, and the results show that it solved the data scarcity problem based on the Fuzzy-AHP and recommended items fit for a user with the data partition algorithm even with the influx of new users. It is thought that research on the density-based clustering will be needed to filter out future noise data or outlier data.

Regulatory Focus Classification for Web Shopping Consumers According to Product Type (제품유형에 따른 웹쇼핑 소비자의 조절초점성향 분류)

  • Baik, Jong-Bum;Han, Chung-Seok;Jang, Eun-Young;Kim, Yong-Bum;Choi, Ja-Young;Lee, Soo-Won
    • The KIPS Transactions:PartB
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    • v.19B no.4
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    • pp.231-236
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    • 2012
  • According to consumer behavior theory, human propensity can be divided into two regulatory focus types: promotion and prevention. These two types have much influence on the consumer's decision in many diverse areas. In this research, we apply regulatory focus theory to personalized recommendation to minimize the cold start problem and to improve the performance of recommendation algorithms. To achieve this goal, we extract the consumer behavior variables and information exploration activity index from web shopping logs. We then use them for classifying regulatory focus of the consumer. This research has the contribution to show the possibility of systematization of consumer behavior theory as an interdisciplinary research tool of social science and information technology. Based on this attempt, we will extend the research to IT services adapting theories on other areas.

Numerical analysis of melting process in a water tank for fuel-cell vehicles (연료전지 자동차의 물탱크 해빙과정에 대한 수치해석적 연구)

  • Kim, Hark-Koo;Jeong, Si-Young;Hur, Nahm-Keon;Lim, Tae-Won;Park, Yong-Sun
    • Proceedings of the SAREK Conference
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    • 2006.06a
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    • pp.74-79
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    • 2006
  • Good cold start characteristics are essential for satisfactory operation of fuel cell vehicles. In this study, the melting process has been numerically investigated for a water tank frozen in cold weather The 2-D model of the tank containing ice and plate heaters was assumed and the unsteady melting process of the ice was calculated. The enthalpy method was used for the description of the melting process, and a FVM code was used to solve the problem. The feasibility study compared with other experiment showed that the developed program was able to describe the melting process well. From the numerical analysis carried out for different wall temperatures of the pate heaters, some important design factors could be found such as local overheating and pressurization in the tank.

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Auxiliary Stacked Denoising Autoencoder based Collaborative Filtering Recommendation

  • Mu, Ruihui;Zeng, Xiaoqin
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • v.14 no.6
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    • pp.2310-2332
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    • 2020
  • In recent years, deep learning techniques have achieved tremendous successes in natural language processing, speech recognition and image processing. Collaborative filtering(CF) recommendation is one of widely used methods and has significant effects in implementing the new recommendation function, but it also has limitations in dealing with the problem of poor scalability, cold start and data sparsity, etc. Combining the traditional recommendation algorithm with the deep learning model has brought great opportunity for the construction of a new recommender system. In this paper, we propose a novel collaborative recommendation model based on auxiliary stacked denoising autoencoder(ASDAE), the model learns effective the preferences of users from auxiliary information. Firstly, we integrate auxiliary information with rating information. Then, we design a stacked denoising autoencoder based collaborative recommendation model to learn the preferences of users from auxiliary information and rating information. Finally, we conduct comprehensive experiments on three real datasets to compare our proposed model with state-of-the-art methods. Experimental results demonstrate that our proposed model is superior to other recommendation methods.