• Title/Summary/Keyword: recommend system

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Study on the Smart Charging for Plug-in Hybrid Electric Vehicle (플러그인 하이브리드 전기자동차의 스마트 충전에 관한 연구)

  • Roh, Chul-Woo;Kim, Min-Soo
    • 한국신재생에너지학회:학술대회논문집
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    • 2008.10a
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    • pp.349-352
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    • 2008
  • The most concerning issue in these days is the energy crisis by increasing threat of global warming and depletion of natural resources. In the situations, the Plug-in Hybrid Electric Vehicle (PHEV) is drawing attention from many countries for the next generation's car which has higher fuel efficiency and lower environmental impact. This paper presents simulation results about the limit capacity of central power-grid which doesn't have enough surplus electric power for charging PHEVs. Therefore, this paper also presents a smart charging system that can charge the PHEVs with a function of distributing demands of charging. The smart charging system is an agent facility between the government and consumer, which can recommend the best time to charge the battery of PHEVs by the lowest energy cost. This function of choosing time-slots is the technical system for the government which wants to control the consumption rate of electric power for PHEVs. Finally, this paper presents the economic feasibility of PHEVs from the two kinds of price system, midnight electric price and home electric price.

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Supply Chain Network Design - a Model and its Applications (공급사슬망 설계를 위한 수리모형 수립 및 응용)

  • Kim Jeonghyuk;Kim Daeki
    • Korean Management Science Review
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    • v.21 no.2
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    • pp.15-25
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    • 2004
  • Great effort has been exerted to redesign the supply chain network as a means to improve corporate competitiveness. In this study, we present a mathematical model and a solution system to help redesign corporate logistics networks. The objective of the model is to minimize total logistics costs. We applied the solution system to real problem cases. We use the model and the concept to develop decision support system that is based on C++ with the use of CPLEX callable library as a solution engine. We tested and verified the DSS for redesigning the network of a large Korean electronics company. Through various scenario analyses. we recommend to redesign their supply chain network that demonstrates the possibility of substantial logistics cost savings.

Derivation of an Energy Function Based on Vector Product and Application to the Power System with Transfer Conductances and Capacitors (벡터 곱에 근거한 에너지함수 유도와 선로 컨덕턴스 및 커패시터를 포함한 전력시스템에의 적용 연구)

  • Moon Young-Hyun;Oh Yong-Taek;Lee Byung Ha
    • The Transactions of the Korean Institute of Electrical Engineers A
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    • v.54 no.6
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    • pp.274-283
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    • 2005
  • This paper presents a new method to derive energy function based on vector product. Using this method, an energy function to consider transfer conductances and capacitors is derived. Then we recommend a voltage collapse criteria to predict the voltage collapse in power systems by using the energy margin derived by the proposed energy function. This energy function is applied to a 2-bus power system reflecting transfer conductances and capacitors. We show that the energy function derived based on vector product can be applied in order to analyze power system stability and the energy margin can be utilized as a criterion of voltage collapse by simulation for the 2-bus system.

A Study on Improving Efficiency of Recommendation System Using RFM (RFM을 활용한 추천시스템 효율화 연구)

  • Jeong, Sora;Jin, Seohoon
    • Journal of the Korean Institute of Plant Engineering
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    • v.23 no.4
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    • pp.57-64
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    • 2018
  • User-based collaborative filtering is a method of recommending an item to a user based on the preference of the neighbor users who have similar purchasing history to the target user. User-based collaborative filtering is based on the fact that users are strongly influenced by the opinions of other users with similar interests. Item-based collaborative filtering is a method of recommending an item by comparing the similarity of the user's previously preferred items. In this study, we create a recommendation model using user-based collaborative filtering and item-based collaborative filtering with consumer's consumption data. Collaborative filtering is performed by using RFM (recency, frequency, and monetary) technique with purchasing data to recommend items with high purchase potential. We compared the performance of the recommendation system with the purchase amount and the performance when applying the RFM method. The performance of recommendation system using RFM technique is better.

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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A Recommender Agent using Association Item Trees (연관 아이템 트리를 이용한 추천 에이전트)

  • Ko, Su-Jeong
    • Journal of KIISE:Software and Applications
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    • v.36 no.4
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    • pp.298-305
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    • 2009
  • In contrast to content_based filtering systems, collaborative filtering systems not only don't contain information of items, they can not recommend items when users don't provide the information of their interests. In this paper, we propose the recommender agent using association item tree to solve the shortcomings of collaborative filtering systems. Firstly, the proposed method clusters users into groups using vector space model and K-means algorithm and selects group typical rating values. Secondly, the degree of associations between items is extracted from computing mutual information between items and an associative item tree is generated by group. Finally, the method recommends items to an active user by using a group typical rating value and an association item tree. The recommender agent recommends items by combining user information with item information. In addition, it can accurately recommend items to an active user, whose information is insufficient at first rate, by using an association item tree based on mutual information for the similarity between items. The proposed method is compared with previous methods on the data set of MovieLens recommender system.

A Recommendation System using Context-based Collaborative Filtering (컨텍스트 기반 협력적 필터링을 이용한 추천 시스템)

  • Lee, Se-Il;Lee, Sang-Yong
    • Journal of the Korean Institute of Intelligent Systems
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    • v.21 no.2
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    • pp.224-229
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    • 2011
  • Collaborative filtering is used the most for recommendation systems because it can recommend potential items. However, when there are not many items to be evaluated, collaborative filtering can be subject to the influence of similarity or preference depending on the situation or the whim of the evaluator. In addition, by recommending items only on the basis of similarity with items that have been evaluated previously without relation to the present situation of the user, the recommendations become less accurate. In this paper, in order to solve the above problems, before starting the collaborative filtering procedure, we calculated similarity not by comparing all the values evaluated by users but rather by comparing only those users who were above the average in order to improve the accuracy of the recommendations. In addition, in the ceaselessly changing ubiquitous computing environment, it is not proper to recommend service information based only on the items evaluated by users. Therefore, we used methods of calculating similarity wherein the users' real time context information was used and a high weight was assigned to similar users. Such methods improved the recommendation accuracy by 16.2% on average.

A Case Study on the Personalized Online Recruitment Services : Focusing on Worldjob+'s Use of Splunk (개인화된 구직정보서비스 제공에 관한 사례연구 : 월드잡플러스의 스플렁크 활용을 중심으로)

  • Rhee, MoonKi Kyle;Lee, Jae Deug;Park, Seong Taek
    • Journal of the Korea Convergence Society
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    • v.9 no.2
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    • pp.241-250
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    • 2018
  • Online recruitment services have emerged as one of the most popular Internet services, providing job seekers with a comprehensive list of jobs and a search engine. But many recruitment services suffer from shortcomings due to their reliance on traditional client-pull information access model, in manay cases resulting in unfocused search results. Worldjob+, being operated by The Human Resources Development Service of Korea, addresses these problems and uses Splunk, a platform for analyzing machine data, to provide a more proactive and personalised services. It focuses on enhancing the existing system in two different ways: (a) using personalised automated matching techniques to proactively recommend most preferrable profile or specification information for each job opening announcement or recruiting company, (b) and to recommend most preferrable or desirable job opening announcement for each job-seeker. This approach is a feature-free recommendation technique that recommends information items to a given user based on what similar users have previously liked. A brief discussion about the potential benefit is also provided as a conclusion.

A Method for Recommending Learning Contents Using Similarity and Difficulty (유사도와 난이도를 이용한 학습 콘텐츠 추천 방법)

  • Park, Jae -Wook;Lee, Yong-Kyu
    • Journal of the Korea Society of Computer and Information
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    • v.16 no.7
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    • pp.127-135
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    • 2011
  • It is required that an e-learning system has a content recommendation component which helps a learner choose an item. In order to predict items concerning learner's interest, collaborative filtering and content-based filtering methods have been most widely used. The methods recommend items for a learner based on other learner's interests without considering the knowledge level of the learner. So, the effectiveness of the recommendation can be reduced when the number of overall users are relatively small. Also, it is not easy to recommend a newly added item. In order to address the problem, we propose a content recommendation method based on the similarity and the difficulty of an item. By using a recommendation function that reflects both characteristics of items, a higher-level leaner can choose more difficult but less similar items, while a lower-level learner can select less difficult but more similar items, Thus, a learner can be presented items according to his or her level of achievement, which is irrelevant to other learner's interest.

Natural Language Processing-based Personalized Twitter Recommendation System (자연어 처리 기반 맞춤형 트윗 추천 시스템)

  • Lee, Hyeon-Chang;Yu, Dong-Pil;Jung, Ga-Bin;Nam, Yong-Wook;Kim, Yong-Hyuk
    • Journal of the Korea Convergence Society
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    • v.9 no.12
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    • pp.39-45
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    • 2018
  • Twitter users use 'Following', 'Retweet' and so on to find tweets that they are interested in. However, it is difficult for users to find tweets that are of interest to them on Twitter, which has more than 300 million users. In this paper, we developed a customized tweet recommendation system to resolve it. First, we gather current trends to collect tweets that are worth recommending to users and popular tweets that talk about trends. Later, to analyze users and recommend customized tweets, the users' tweets and the collected tweets are categorized. Finally, using Web service, we recommend tweets that match with user categorization and users whose interests match. Consequentially, we recommended 67.2% of proper tweet.