• Title/Summary/Keyword: hyperlinks

검색결과 62건 처리시간 0.023초

국내 100대 기업 페이스북 콘텐츠 전략과 인게이지먼트 연구: B2B·B2C 기업 간 차이를 중심으로 (Study on Corporate Facebook Posts and User Engagement of the KOSPI 100 Companies in Korea: Difference between B2B and B2C Companies)

  • 조주홍;고채은;백현미
    • 지식경영연구
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    • 제23권3호
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    • pp.65-88
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    • 2022
  • 기업은 브랜드 인지도 제고와 제품 판매를 위한 공중과의 소통 창구로 소셜미디어를 적극 활용해 왔다. 특히 팬데믹은 효과적인 비대면 소통 채널로서 소셜미디어의 역할이 부상하는 계기가 되었다. 그러나 기업의 사업 성격에 따른 소셜미디어 활용 전략의 차이에 관한 연구는 부족한 실정이다. 이에 본 연구는 기업을 B2B와 B2C로 구분하여 두 집단 간 이용자 인게이지먼트에 영향을 미치는 소셜미디어 콘텐츠 구성 요소에 차이가 있는지를 실증적으로 알아보았다. 분석을 위해 국내 시가총액 상위 100대 기업 중 페이스북 팬페이지를 운영하는 기업 22개를 대상으로 2020년 1월 1일부터 12월 31일까지 게재한 콘텐츠를 살펴보았다. 그 결과 B2C 기업은 콘텐츠 제작 시 B2B 기업보다 동영상을 더 많이 사용해 생생함을 강조했으며, 정보 검색 용이성 측면에서 해시태그를 더 많이 사용했고, 본문에서는 제품명을 더 많이 언급한 것으로 나타났다. 반면 B2B 기업은 콘텐츠 제작 시 이미지를 선호했으며, 용이한 정보 검색을 위해 하이퍼링크를 더 많이 사용했고, 본문에서 제품보다는 회사명을 더 많이 언급했다. 콘텐츠 구성 요소와 인게이지먼트 간의 관계에서 B2B 기업은 이미지가 포함된 경우와 본문 길이가 긴 경우 인게이지먼트 지표(좋아요, 댓글, 공유 수)가 높아졌으나, 하이퍼링크와 URL이 포함된 경우 반대로 인게이지먼트가 낮아졌다. B2C 기업에서는 본문 길이가 길수록 인게이지먼트가 유의미하게 증가함을 확인하였다. 본 연구는 기업 실무자나 운영자가 회사의 특성에 맞춰 인게이지먼트를 높일 수 있는 소셜미디어 전략을 수립하는 데 실무적인 시사점을 제공한다.

시맨틱 웹 자원의 랭킹을 위한 알고리즘: 클래스중심 접근방법 (A Ranking Algorithm for Semantic Web Resources: A Class-oriented Approach)

  • 노상규;박현정;박진수
    • Asia pacific journal of information systems
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    • 제17권4호
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    • pp.31-59
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    • 2007
  • We frequently use search engines to find relevant information in the Web but still end up with too much information. In order to solve this problem of information overload, ranking algorithms have been applied to various domains. As more information will be available in the future, effectively and efficiently ranking search results will become more critical. In this paper, we propose a ranking algorithm for the Semantic Web resources, specifically RDF resources. Traditionally, the importance of a particular Web page is estimated based on the number of key words found in the page, which is subject to manipulation. In contrast, link analysis methods such as Google's PageRank capitalize on the information which is inherent in the link structure of the Web graph. PageRank considers a certain page highly important if it is referred to by many other pages. The degree of the importance also increases if the importance of the referring pages is high. Kleinberg's algorithm is another link-structure based ranking algorithm for Web pages. Unlike PageRank, Kleinberg's algorithm utilizes two kinds of scores: the authority score and the hub score. If a page has a high authority score, it is an authority on a given topic and many pages refer to it. A page with a high hub score links to many authoritative pages. As mentioned above, the link-structure based ranking method has been playing an essential role in World Wide Web(WWW), and nowadays, many people recognize the effectiveness and efficiency of it. On the other hand, as Resource Description Framework(RDF) data model forms the foundation of the Semantic Web, any information in the Semantic Web can be expressed with RDF graph, making the ranking algorithm for RDF knowledge bases greatly important. The RDF graph consists of nodes and directional links similar to the Web graph. As a result, the link-structure based ranking method seems to be highly applicable to ranking the Semantic Web resources. However, the information space of the Semantic Web is more complex than that of WWW. For instance, WWW can be considered as one huge class, i.e., a collection of Web pages, which has only a recursive property, i.e., a 'refers to' property corresponding to the hyperlinks. However, the Semantic Web encompasses various kinds of classes and properties, and consequently, ranking methods used in WWW should be modified to reflect the complexity of the information space in the Semantic Web. Previous research addressed the ranking problem of query results retrieved from RDF knowledge bases. Mukherjea and Bamba modified Kleinberg's algorithm in order to apply their algorithm to rank the Semantic Web resources. They defined the objectivity score and the subjectivity score of a resource, which correspond to the authority score and the hub score of Kleinberg's, respectively. They concentrated on the diversity of properties and introduced property weights to control the influence of a resource on another resource depending on the characteristic of the property linking the two resources. A node with a high objectivity score becomes the object of many RDF triples, and a node with a high subjectivity score becomes the subject of many RDF triples. They developed several kinds of Semantic Web systems in order to validate their technique and showed some experimental results verifying the applicability of their method to the Semantic Web. Despite their efforts, however, there remained some limitations which they reported in their paper. First, their algorithm is useful only when a Semantic Web system represents most of the knowledge pertaining to a certain domain. In other words, the ratio of links to nodes should be high, or overall resources should be described in detail, to a certain degree for their algorithm to properly work. Second, a Tightly-Knit Community(TKC) effect, the phenomenon that pages which are less important but yet densely connected have higher scores than the ones that are more important but sparsely connected, remains as problematic. Third, a resource may have a high score, not because it is actually important, but simply because it is very common and as a consequence it has many links pointing to it. In this paper, we examine such ranking problems from a novel perspective and propose a new algorithm which can solve the problems under the previous studies. Our proposed method is based on a class-oriented approach. In contrast to the predicate-oriented approach entertained by the previous research, a user, under our approach, determines the weights of a property by comparing its relative significance to the other properties when evaluating the importance of resources in a specific class. This approach stems from the idea that most queries are supposed to find resources belonging to the same class in the Semantic Web, which consists of many heterogeneous classes in RDF Schema. This approach closely reflects the way that people, in the real world, evaluate something, and will turn out to be superior to the predicate-oriented approach for the Semantic Web. Our proposed algorithm can resolve the TKC(Tightly Knit Community) effect, and further can shed lights on other limitations posed by the previous research. In addition, we propose two ways to incorporate data-type properties which have not been employed even in the case when they have some significance on the resource importance. We designed an experiment to show the effectiveness of our proposed algorithm and the validity of ranking results, which was not tried ever in previous research. We also conducted a comprehensive mathematical analysis, which was overlooked in previous research. The mathematical analysis enabled us to simplify the calculation procedure. Finally, we summarize our experimental results and discuss further research issues.