RISS 학술연구정보서비스

검색
다국어 입력

http://chineseinput.net/에서 pinyin(병음)방식으로 중국어를 변환할 수 있습니다.

변환된 중국어를 복사하여 사용하시면 됩니다.

예시)
  • 中文 을 입력하시려면 zhongwen을 입력하시고 space를누르시면됩니다.
  • 北京 을 입력하시려면 beijing을 입력하시고 space를 누르시면 됩니다.
닫기
    인기검색어 순위 펼치기

    RISS 인기검색어

      KCI등재 SCOPUS

      Multi-Purpose Hybrid Recommendation System on Artificial Intelligence to Improve Telemarketing Performance

      한글로보기

      https://www.riss.kr/link?id=A106494746

      • 0

        상세조회
      • 0

        다운로드
      서지정보 열기
      • 내보내기
      • 내책장담기
      • 공유하기
      • 오류접수

      부가정보

      다국어 초록 (Multilingual Abstract)

      The purpose of this study is to incorporate telemarketing processes to improve telemarketing performance. For this application, we have attempted to mix the model of machine learning to extract potential customers with personalisation techniques to de...

      The purpose of this study is to incorporate telemarketing processes to improve telemarketing performance. For this application, we have attempted to mix the model of machine learning to extract potential customers with personalisation techniques to derive recommended products from actual contact. Most of traditional recommendation systems were mainly in ways such as collaborative filtering, which predicts items with a high likelihood of future purchase, based on existing purchase transactions or preferences for products. But, under these systems, new users or items added to the system do not have sufficient information, and generally cause problems such as a cold start that can not obtain satisfactory recommendation items. Also, indiscriminate telemarketing attempts can backfire as they increase the dissatisfaction and fatigue of customers who do not want to be contacted. To this purpose, this study presented a multi-purpose hybrid recommendation algorithm to achieve two goals: to select customers with high possibility of contact, and to recommend products to selected customers. In addition, we used subscription data from telemarketing agency that handles insurance products to derive realistic applicability of the proposed recommendation system. Our proposed recommendation system would certainly solve the cold start and scarcity problem of existing recommendation algorithm by using contents information such as customer master information and telemarketing history. Also. the model could show excellent performance not only in terms of overall performance but also in terms of the recommendation success rate of the unpopular product.

      더보기

      참고문헌 (Reference)

      1 Shaw, G., "Using association rules to solve the cold-start problem in recommender systems" 6118 : 340-347, 2010

      2 Khribi, M. K., "Toward a hybrid recommender system for e-learning personalization based on web usage mining techniques and information retrieval" 6136-6145, 2007

      3 Sarwar, B., "Sparsity, scalability, and distribution in recommender systems" University of Minnesota 2001

      4 Mossong, J., "Social contacts and mixing patterns relevant to the spread of infectious diseases" 5 (5): 381-391, 2008

      5 Langseth, H., "Scalable learning of probabilistic latent models for collaborative filtering" 74 : 1-11, 2015

      6 Bobadilla, J., "Recommender systems survey" 46 : 109-132, 2013

      7 Hu, R., "Recommender Systems and the Social Web" 17-24, 2010

      8 Lacerda, A., "Multi-objective ranked bandits for recommender systems" 246 : 12-24, 2017

      9 Mobasher, B., "Model-based collaborative filtering as a defense against profile injection attacks" 1388-1393, 2006

      10 Chen, Y. L., "Market basket analysis in a multiple store environment" 40 (40): 339-354, 2005

      1 Shaw, G., "Using association rules to solve the cold-start problem in recommender systems" 6118 : 340-347, 2010

      2 Khribi, M. K., "Toward a hybrid recommender system for e-learning personalization based on web usage mining techniques and information retrieval" 6136-6145, 2007

      3 Sarwar, B., "Sparsity, scalability, and distribution in recommender systems" University of Minnesota 2001

      4 Mossong, J., "Social contacts and mixing patterns relevant to the spread of infectious diseases" 5 (5): 381-391, 2008

      5 Langseth, H., "Scalable learning of probabilistic latent models for collaborative filtering" 74 : 1-11, 2015

      6 Bobadilla, J., "Recommender systems survey" 46 : 109-132, 2013

      7 Hu, R., "Recommender Systems and the Social Web" 17-24, 2010

      8 Lacerda, A., "Multi-objective ranked bandits for recommender systems" 246 : 12-24, 2017

      9 Mobasher, B., "Model-based collaborative filtering as a defense against profile injection attacks" 1388-1393, 2006

      10 Chen, Y. L., "Market basket analysis in a multiple store environment" 40 (40): 339-354, 2005

      11 Sarwar, B., "Item-based collaborative filtering recommendation algorithms" 285-295, 2001

      12 Wang, X., "Improving content-based and hybrid music recommendation using deep learning" 627-636, 2014

      13 Burke, R., "Hybrid web recommender systems"

      14 Burke, R., "Hybrid recommender systems : Survey and experiments" 12 (12): 331-370, 2002

      15 Brynjolfsson, E., "Goodbye pareto principle, hello long tail : The effect of search costs on the concentration of product sales" 57 (57): 1373-1386, 2011

      16 Ghazarian, S., "Enhancing memory-based collaborative filtering for group recommender systems" 42 (42): 3801-3812, 2015

      17 Breese, J. S., "Empirical analysis of predictive algorithms for collaborative filtering" 43-52, 1998

      18 Kim, D., "Convolutional matrix factorization for document context-aware recommendation" 233-240, 2016

      19 Arsan, T., "Comparison of collaborative filtering algorithms with various similarity measures for movie recommendation" 6 (6): 1-20, 2016

      20 Ekstrand, M. D., "Collaborative filtering recommender systems" 4 (4): 81-173, 2010

      21 Min, F, "Cold-start recommendation through granular association rules"

      22 Ordonez, C., "Association rule discovery with the train and test approach for heart disease prediction" 10 (10): 334-343, 2006

      23 Linden, G., "Amazon.com recommendations item-to-item collaborative filtering" 7 (7): 76-80, 2003

      24 Reshma, R., "Alleviating data sparsity and cold start in recommender systems using social behaviour" 1-8, 2016

      25 Wang, H. C., "Adapting topic map and social influence to the personalized hybrid recommender system" 1-17, 2018

      26 Paranjape-Voditel, P., "A stock market portfolio recommender system based on association rule mining" 13 (13): 1055-1063, 2013

      27 Wang, Y. F., "A personalized recommender system for the cosmetic business" 26 (26): 427-434, 2004

      28 Yang, W. S., "A location-aware recommender system for mobile shopping environments" 34 (34): 437-445, 2008

      29 Paradarami, T. K., "A hybrid recommender system using artificial neural networks" 83 : 300-313, 2017

      30 Kardan, A. A., "A hybrid recommender system for e-learning environments based on concept maps and collaborative tagging" 300-307, 2009

      31 Chen, W., "A hybrid recommendation algorithm adapted in e-learning environments" 17 (17): 271-284, 2014

      32 Hu, B., "A hybrid music recommendation system by M-LSA" 1 : 129-132, 2009

      33 Christakou, C., "A hybrid movie recommender system based on neural networks" 16 (16): 771-792, 2007

      34 Moro, S., "A data-driven approach to predict the success of bank telemarketing" 62 : 22-31, 2014

      35 Acilar, A. M., "A collaborative filtering method based on artificial immune network" 36 (36): 8324-8332, 2009

      더보기

      동일학술지(권/호) 다른 논문

      분석정보

      View

      상세정보조회

      0

      Usage

      원문다운로드

      0

      대출신청

      0

      복사신청

      0

      EDDS신청

      0

      동일 주제 내 활용도 TOP

      더보기

      주제

      연도별 연구동향

      연도별 활용동향

      연관논문

      연구자 네트워크맵

      공동연구자 (7)

      유사연구자 (20) 활용도상위20명

      인용정보 인용지수 설명보기

      학술지 이력

      학술지 이력
      연월일 이력구분 이력상세 등재구분
      2023 평가예정 해외DB학술지평가 신청대상 (해외등재 학술지 평가)
      2020-01-01 평가 등재학술지 유지 (해외등재 학술지 평가) KCI등재
      2017-01-01 평가 등재학술지 유지 (계속평가) KCI등재
      2013-01-01 평가 등재 1차 FAIL (등재유지) KCI등재
      2010-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2009-03-05 학술지명변경 한글명 : 경영정보학 연구 -> Asia Pacific Journal of Information Systems
      외국어명 : The Journal of MIS Research -> Asia Pacific Journal of Information Systems
      KCI등재
      2008-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2006-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2004-01-01 평가 등재학술지 유지 (등재유지) KCI등재
      2001-01-01 평가 등재학술지 선정 (등재후보2차) KCI등재
      1998-07-01 평가 등재후보학술지 선정 (신규평가) KCI등재후보
      더보기

      학술지 인용정보

      학술지 인용정보
      기준연도 WOS-KCI 통합IF(2년) KCIF(2년) KCIF(3년)
      2016 0.49 0.49 0.69
      KCIF(4년) KCIF(5년) 중심성지수(3년) 즉시성지수
      0.73 0.7 0.808 0.1
      더보기

      이 자료와 함께 이용한 RISS 자료

      나만을 위한 추천자료

      해외이동버튼