• 제목/요약/키워드: Concor Analysis

검색결과 115건 처리시간 0.019초

빅데이터를 활용한 패션쇼에 대한 소비자 인식 연구 (A Study of Consumer Perception on Fashion Show Using Big Data Analysis)

  • 김다정;이승희
    • 패션비즈니스
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    • 제23권3호
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    • pp.85-100
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    • 2019
  • This study examines changes in consumer perceptions of fashion shows, which are critical elements in the apparel industry and a means to represent a brand's image and originality. For this purpose, big data in clothing marketing, text mining, semantic network analysis techniques were applied. This study aims to verify the effectiveness and significance of fashion shows in an effort to give directions for their future utilization. The study was conducted in two major stages. First, data collection with the key word, "fashion shows," was conducted across websites, including Naver and Daum between 2015 and 2018. The data collection period was divided into the first- and second-half periods. Next, Textom 3.0 was utilized for data refinement, text mining, and word clouding. The Ucinet 6.0 and NetDraw, were used for semantic network analysis, degree centrality, CONCOR analysis and also visualization. The level of interest in "models" was found to be the highest among the perception factors related to fashion shows in both periods. In the first-half period, the consumer interests focused on detailed visual stimulants such as model and clothing while in the second-half period, perceptions changed as the value of designers and brands were increasingly recognized over time. The findings of this study can be utilized as a tool to evaluate fashion shows, the apparel industry sectors, and the marketing methods. Additionally, it can also be used as a theoretical framework for big data analysis and as a basis of strategies and research in industrial developments.

비정형 빅데이터를 활용한 코로나19 발병 전후 경인 아라뱃길 인식 비교 탐색 (Comparative Exploration of Gyeongin Ara Waterway Recognition Before and After COVID-19 Outbreak Using Unstructured Big Data)

  • 한장헌
    • 디지털산업정보학회논문지
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    • 제20권1호
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    • pp.17-29
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    • 2024
  • The Gyeongin Ara Waterway is a regional development project designed to transport cargo by sea and to utilize the surrounding waterfront area to enjoy tourism and leisure. It is being used as a space for demonstration projects for urban air transportation (UAM), which has recently been attracting attention, and various efforts are being made at the local level to strengthen cultural and tourism functions and revitalize local food. This study examined the perception and trends of tourism consumers on the Gyeongin Ara Waterway before and after the outbreak of COVID-19. The research method utilized semantic network analysis based on social network analysis. As a result of the study, first, before the outbreak of COVID-19, key words such as bicycle, Han River, riding, Gimpo, Seoul, hotel, cruise ship, Korea Water Resources Corporation, emotion, West Sea, weekend, and travel showed a high frequency of appearance. After the outbreak of COVID-19, keywords such as cafe, discovery, women, Gimpo, restaurant, bakery, observatory, La Mer, and cruise ship showed a high frequency of appearance. Second, the results of the degree centrality analysis showed that before the outbreak of COVID-19, there was increased interest in accommodations for tourism, such as Marina Bay and hotels. After the outbreak of COVID-19, interest in food such as specific bakeries and cafes such as La Mer was found to be high. Third, due to the CONCOR analysis, five keyword clusters were formed before the outbreak of COVID-19, and the number of keyword clusters increased to eight after the outbreak of COVID-19.

빅데이터 분석을 활용한 하이서울패션쇼에 대한 소비자 인식 조사 (A Study on the Consumer's Perception of HiSeoul Fashion Show Using Big Data Analysis)

  • 한기향
    • 패션비즈니스
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    • 제23권5호
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    • pp.81-95
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    • 2019
  • The purpose of this study is to research consumers' perception of the HiSeoul fashion show, which is being used by new designers as a means of promotion, and to propose a strategy for revitalizing new designer brands. This was done in order to secure basic data from fashion consumers, to help guide marketing strategies and promote rising designers. In this research, the consumers' perception of HiSeoul fashion show was verified using text-mining, data refinement and word clouding that was undertaken by TEXTOM3.0. Also, semantic network analysis, CONCOR analysis and visualization of the analysis results were performed using Ucinet 6.0 and NetDraw. "HiSeoul fashion show" was used as the keyword for text-mining and data was collected from March 1, 2018 to April 30, 2019. Using frequency analysis, TF-IDF, and N-gram, it was also shown that consumers are aware of places where shows are held, such as DDP and Igansumun. It was also revealed that consumers recognize rising designer brands, designer's names, the names of guests attending the show and the photo times. This study is meaningful in that it not only confirmed consumers' interest in new designer brands participating in the HiSeoul Fashion Show through big data but also confirmed that it is available as a marketing strategy to boost brand sales. This study suggests using HiSeoul show room to induce consumer sales, or inviting guests that match the brand image to promote them on SNS on the day the show is held for a marketing strategy.

텍스트 마이닝과 네트워크 분석을 이용한 지역 이미지 변화 분석 (Regional Image Change Analysis using Text Mining and Network Analysis)

  • 정은희
    • 한국정보전자통신기술학회논문지
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    • 제15권2호
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    • pp.79-88
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    • 2022
  • 소셜미디어 빅데이터는 소비자의 소비형태 뿐만 아니라 지역의 이미지를 파악할 수 있는 많은 정보가 포함되어 있다. 본 논문에서는 국내 포털 사이트인 네이버와 다음의 Blog와 Cafe로부터 '삼척'이 포함된 데이터를 2015년부터 2019년까지 1년 단위로 수집하였고, 텍스트 마이닝과 네트워크 분석을 실시하여 지역 이미지를 형성하는 키워드를 추출하고 지역 이미지 변화를 분석하였다. 연구 결과에 따르면, 2015년 지역 이미지는 '장호항', '동해', '해수욕장' 등 인근 지명이나 장소 등의 이미지 인지적 요소들로 표현되고 있는데, 2016년과 2019년은 지역 내의 특정 장소인 삼척쏠비치로 이미지 인지적 요소가 변한 것을 알 수 있다. 그리고 지역 이미지와 연관된 키워드들이 삼척을 대표하는 명소인 '장호항', 리조트가 포함하고 있는 것을 보아 지역 이미지 형성에 인프라 시설 요소가 큰 역할을 한다고 볼 수 있다. 네트워크 데이터에 대한 유의성 검증은 부트스트랩 기법을 이용하였고, 2015년, 2016년, 2019년 p-value가 각각 0.0002, 0.0006, 0.0002로 유의수준 5%에서 통계적으로 유의한 것으로 나타났다.

A Study on Zero Pay Image Recognition Using Big Data Analysis

  • Kim, Myung-He;Ryu, Ki-Hwan
    • International Journal of Internet, Broadcasting and Communication
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    • 제14권3호
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    • pp.193-204
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    • 2022
  • The 2018 Seoul Zero Pay is a policy actively promoted by the government as an economic stimulus package for small business owners and the self-employed who are experiencing economic depression due to COVID-19. However, the controversy over the effectiveness of Zero Pay continues even after two years have passed since the implementation of the policy. Zero Pay is a joint QR code mobile payment service introduced by the government, Seoul city, financial companies, and private simple payment providers to reduce the burden of card merchant fees for small business owners and self-employed people who are experiencing economic difficulties due to the economic downturn., it was attempted in the direction of economic revitalization for the return of alleyways[1]. Therefore, this study intends to draw implications for improvement measures so that the ongoing zero-pay can be further activated and the economy can be settled normally. The analysis results of this study are as follows. First, it shows the effect of increasing the income of small business owners by inducing consumption in alleyways through the economic revitalization policy of Zero Pay. Second, the issuance and distribution of Zero Pay helps to revitalize the local economy and contribute to the establishment of a virtuous cycle system. Third, stable operation is being realized by the introduction of blockchain technology to the Zero Pay platform. In terms of academic significance, the direction of Zero Pay's policies and systems was able to identify changes in the use of Zero Pay through big data analysis. The implementation of the zero-pay policy is in its infancy, and there are limitations in factors for examining the consumer image perception of zero-pay as there are insufficient prior studies. Therefore, continuous follow-up research on Zero Pay should be conducted.

서대문구 천연·충현 지역 맛골목 순례: 해시태그 단어의 의미연결망분석과 지역 대학연계 쿠킹클래스 운영 (The Taste-alleys Pilgrimage in Cheonyeon·Chunghyeon Seodaemun-gu: A Semantic Network Analysis of the Hashtag and Cooking Class Operation of Industry-academic Cooperation)

  • 한경수;민지은;안지현;김진희
    • 급식외식위생학회지
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    • 제4권1호
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    • pp.35-41
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    • 2023
  • This study was based on the results of the study of 'Cheonyeon and Chunghyun Taste Alley Pilgrimage- Introducing Hidden Restaurants in Our Town', which was adopted as a project to revitalize urban regeneration as part of the Cheonyeon and Chunghyun Urban Regeneration New Deal project. This study was conducted in total of two stages, as a first step, the commercial district of Seodaemun Station was analyzed by analyzing the hashtag (#) mentioned along with the "Seodamun Station Restaurant" on Instagram from 2015 to 2020. As a result of the analysis, it was found to be an office commercial district related to "office workers", and it was found to be a commercial district with the characteristics of "small but certain happiness" where you can find hidden restaurants in front of your house. Based on the characteristics of these commercial districts, five stores utilizing the characteristics of the region were selected and cooking classes were conducted for students of Kyonggi University, who are local residents. The purpose of this study was to revitalize the aging Seoul city and contribute to the formation of positive relationships between local residents and merchants through cooking classes. In addition, the process was produced as digital media content and used as local promotional materials.

패션 라이브 커머스 유형별 소비자 인식 비교: 텍스트 마이닝 적용 (Consumer Perception of Types of Fashion Live Commerce: Using Text Mining)

  • 곽하연;이규혜
    • 패션비즈니스
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    • 제25권3호
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    • pp.90-107
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    • 2021
  • This study concludes that communication based on interaction between broadcasting hosts and consumers is differently characterized by fashion live commerce types. Subcategories of the types of fashion live commerce were created and used in the analyses of domestic consumer awareness. Three subcategories were created: The department store type, Designer brand type, and Influencer host type. Comments representing consumers' awareness that appear immediately during real-time broadcasting were collected and used for the analyses. The frequency and TF-IDF-based top keywords were selected to analyze the semantic network and CONCOR, and the top keywords were analyzed by deriving the values of degree of centrality. The analysis identified that a group of product attributes and a group of live commerce offered value were common between the three types. As for the group characteristics classified by type, for the department store types, brand attributes, benefits, and values from pursuing the products were identified. For designer brand types, a group of viewers' responses and inquiries were identified. It is interpreted that the satisfaction value gained from hosts with product expertise has been clustered. Influencer host types have affirmed a group of external product values. A close relationship is formed and it is thought to have led a group of values to trust the external image of the product. This study carries significance in analyzing real-time comment data from consumers using fashion live commerce to empirically reveal the characteristics of each type.

패션 트렌드의 주기적 순환성에 관한 빅데이터 융합 분석 (The Analysis of Fashion Trend Cycle using Big Data)

  • 김기현;변혜원
    • 한국융합학회논문지
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    • 제11권12호
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    • pp.113-123
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    • 2020
  • 본 논문은 과거와 현재의 패션 트렌드와 패션 유행 주기에 관한 빅데이터 분석을 실시하였다. 패션 전문가나 패션쇼가 아닌 일반 사람들의 데일리룩을 위한 패션 트렌드를 분석하는데 집중하였다. 소셜 매트릭스 도구인 텍스톰을 활용하여 빈도수 분석, N-gram 분석, 네트워크 분석 및 구조적 등위성 분석을 수행하였다. 분석 결과, 첫째, 패션 전문가가 아닌 일반 사람들의 데일리 룩을 대상으로 과거(1980년대, 1990년대)와 현재(2019년, 2020년)의 패션 키워드를 도출하였다. 둘째, 과거의 패션이 현재의 패션으로 재현되는 순환성과 순환 주기가 30-40년 정도로 짧아졌음을 빅데이터 분석을 통해 과학적으로 검증하였다. 셋째, 도출된 패션 키워드들의 구조적 등위성 분석을 수행한 결과, 과거 패션에서는 청바지 패션, 레트로 코디, 애슬레저룩, 연예인 복고패션의 4개의 군집으로, 현재 패션에서는 레트로 청바지, 뉴트로, 레이디 쉬크, 레트로 퓨처리즘의 4개의 군집을 확인하였다. 넷째, 과거의 패션이 현재의 패션으로 재현되고 진화하는 네트워크 연결 관계를 확인하고 그 배경에 관한 이슈를 고찰하였다. 이와 같은 연구결과는 과거와 현재의 패션 키워드를 도출하고 이로부터 패션 유행의 순환 주기를 확인함으로써 과거를 통해 미래 패션을 예측하도록 하는데 의의가 있다.

소셜네트워크 빅데이터를 활용한 코로나 19에 따른 프로야구 관람문화조사 (Professional Baseball Viewing Culture Survey According to Corona 19 using Social Network Big Data)

  • 김기탁
    • 한국엔터테인먼트산업학회논문지
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    • 제14권6호
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    • pp.139-150
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    • 2020
  • 본 연구의 자료처리는 텍스톰(textom)과 소셜미디어의 단어를 중심으로 3가지 영역인 '코로나 19와 프로야구', '코로나 19와 프로야구 무관중', '코로나 19와 프로스포츠'에 대해 웹 환경에서 데이터 수집과 정제작업을 실시한 후 일괄 처리하였으며, 이를 시각화하기 위해 Ucinet6프로그램을 활용하였다. 구체적으로 웹 환경의 수집은 네이버, 다음, 구글의 채널을 활용하였고, 추출된 단어들 중 전문가회의를 통해 30개의 단어로 요약 정리하여 최종 연구에 활용하였다. 30개의 추출된 단어를 매트릭스를 통해 시각화하였으며, 단어의 유사성과 공통성의 군집을 파악하기 위해 CONCOR분석을 실시하였다. 분석결과 코로나 19와 프로야구에 관련된 군집은 1개의 중심클러스터와 5개의 주변클러스터로 구성되었고 코로나 19여파에 따른 프로야구 개막과 관련된 내용을 주로 검색하고 있는 것으로 나타났다. 코로나 19와 프로야구 무관중에 관련된 군집은 1개의 중심 클러스터와 5개의 주변클러스터로 구성되었으며, 코로나 19에 따른 프로야구 경기와 관련된 프로야구 입장의 키워드를 주로 검색하고 있는 것으로 나타났다. 코로나 19와 프로스포츠에 관련된 군집은 1개의 중심클러스터와 5개의 주변클러스터로 구성되었으며, 코로나 19의 여파에 따른 프로스포츠 시작과 관련된 키워드를 주로 검색하고 있는 것으로 나타났다. 이를 종합해보면 포스트 코로나 시대의 프로야구는 많은 변화가 있을 것이라 예상된다. 특히 응원문화는 관중들이 원하는 정도의 만족감은 없겠지만 관중들이 누릴 수 있는 직접관람의 기회를 누리기 위해 야구장에서도 코로나 19를 극복하기 위한 하나의 일상으로의 행동강령이 잘 유지되어야 할 것이다. 관람문화 또한 라이브커머스, AR/VR, O4O(Online for Offline)등의 4차 산업혁명의 기술도입으로 현장감 있는 쌍방향 소통이 가능한 인터렉티브 소통의 디지털이 구현돼야 할 것이다. 포스트 코로나 시대는 프로스포츠에도 새로운 형태의 패러다임이 구축될 것이다. 랜선 응원, SNS를 활용한 응원, 실시간 동시시청, 라이브 채팅응원, 편파중계 등 다양한 형태의 응원문화가 새로운 창작 콘텐츠 형태로 진화할 것이며, 팬들의 욕구를 충족할 수 있는 새로운 형태의 패러다임이 구축돼야 하겠다.

Strategies for the Development of Watermelon Industry Using Unstructured Big Data Analysis

  • LEE, Seung-In;SON, Chansoo;SHIM, Joonyong;LEE, Hyerim;LEE, Hye-Jin;CHO, Yongbeen
    • 산경연구논집
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    • 제12권1호
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    • pp.47-62
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    • 2021
  • Purpose: Our purpose in this study was to examine the strategies for the development of watermelon industry using unstructured big data analysis. That is, this study was to look the change of issues and consumer's perception about watermelon using big data and social network analysis and to investigate ways to strengthen the competitiveness of watermelon industry based on that. Methodology: For this purpose, the data was collected from Naver (blog, news) and Daum (blog, news) by TEXTOM 4.5 and the analysis period was set from 2015 to 2016 and from 2017-2018 and from 2019-2020 in order to understand change of issues and consumer's perception about watermelon or watermelon industry. For the data analysis, TEXTOM 4.5 was used to conduct key word frequency analysis, word cloud analysis and extraction of metrics data. UCINET 6.0 and NetDraw function of UCINET 6.0 were utilized to find the connection structure of words and to visualize the network relations, and to make a cluster of words. Results: The keywords related to the watermelon extracted such as 'the stalk end of a watermelon', 'E-mart', 'Haman', 'Gochang', and 'Lotte Mart' (news: 015-2016), 'apple watermelon', 'Haman', 'E-mart', 'Gochang', and' Mudeungsan watermelon' (news: 2017-2018), 'E-mart', 'apple watermelon', 'household', 'chobok', and 'donation' (news: 2019-2020), 'watermelon salad', 'taste', 'the heat', 'baby', and 'effect' (blog: 2015-2016), 'taste', 'watermelon juice', 'method', 'watermelon salad', and 'baby' (blog: 2017-2018), 'taste', 'effect', 'watermelon juice', 'method', and 'apple watermelon' (blog: 2019-2020) and the results from frequency and TF-IDF analysis presented. And in CONCOR analysis, appeared as four types, respectively. Conclusions: Based on the results, the authors discussed the strategies and policies for boosting the watermelon industry and limitations of this study and future research directions. The results of this study will help prioritize strategies and policies for boosting the consumption of the watermelon and contribute to improving the competitiveness of watermelon industry in Korea. Also, it is expected that this study will be used as a very important basis for agricultural big data studies to be conducted in the future and this study will offer watermelon producers and policy-makers practical points helpful in crafting tailor-made marketing strategies.