• Title/Summary/Keyword: 토픽분석

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Assessing Influence of Human Factors according to Topics for Enhancing Social Search (소셜 검색 향상을 위한 토픽별 인적속성의 영향력 산출)

  • Kwon, Oh-Sang;Park, Gun-Woo;Lee, Sang-Hoon
    • Proceedings of the Korea Information Processing Society Conference
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    • 2010.11a
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    • pp.142-145
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    • 2010
  • 정보의 양이 폭발적으로 증가함에 따라 방대한 정보 속에서 사용자의 검색 의도에 맞는 정보를 효과적으로 제공하기란 매우 어려워졌다. 따라서 웹 사용자들의 요구사항을 충족시키기 위한 연구들이 활발히 수행되고 있으며, 많은 방법론들이 제시되고 있다. 본 논문에서는 회귀분석이라는 통계학적 기법을 통해 검색 토픽에 대한 사용자의 인적속성들이 미치는 영향력을 산출하였다. 이는 인간이 가진 내재적 특성이 토픽별 검색 성향과 어떠한 연관관계가 있는지를 규명한 것이다. 또한 특정 토픽에 대해 영향력이 높은 인적속성의 일치 여부가 해당 토픽에 대한 사용자 검색성향의 유사정도와 매우 큰 상관관계가 있는 것을 증명하였다. 이와 같은 사실을 기반으로 사용자가 특정 토픽에 대해 검색 시 해당 토픽에 대해 영향력이 높은 인적속성을 확인하고, 이 속성이 일치하는 사람들의 검색 정보를 제공한다면, 사용자는 보다 만족된 검색결과를 얻을 수 있을 것이다.

Analysis of Research Trends in Elementary Information Education in Korea using Topic Modeling (토픽 모델링을 활용한 국내 초등 정보교육 연구동향 분석)

  • Shim, Jaekwoun
    • Journal of The Korean Association of Information Education
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    • v.25 no.2
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    • pp.347-354
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    • 2021
  • As interest in artificial intelligence education for elementary school students has recently increased, it is necessary to analyze the existing elementary information education research from a macroscopic point of view to understand the current situation and to provide implications for subsequent research. This study analyzed Journal of The Korean Association of Information Education for the purpose of looking at the research trend of elementary information education in Korea. For the data of the study, all papers published until 2020 in the first issue of the journal were selected, and 11 research topics were derived by modeling topics. As a result of the study, topic T1, the highest proportion, was analyzed to account for about 38%, and keywords such as education, research, analysis, elementary school, and information were derived according to the order of contribution to topic T1. As a result of regression analysis according to the year of the topic, it was found that the research trend is changing to computing thinking, software education, and artificial intelligence education. The significance of this study is that text data related to elementary information education is objectively clustered.

Analysis of trends in deep learning and reinforcement learning

  • Dong-In Choi;Chungsoo Lim
    • Journal of the Korea Society of Computer and Information
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    • v.28 no.10
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    • pp.55-65
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    • 2023
  • In this paper, we apply KeyBERT(Keyword extraction with Bidirectional Encoder Representations of Transformers) algorithm-driven topic extraction and topic frequency analysis to deep learning and reinforcement learning research to discover the rapidly changing trends in them. First, we crawled abstracts of research papers on deep learning and reinforcement learning, and temporally divided them into two groups. After pre-processing the crawled data, we extracted topics using KeyBERT algorithm, and then analyzed the extracted topics in terms of topic occurrence frequency. This analysis reveals that there are distinct trends in research work of all analyzed algorithms and applications, and we can clearly tell which topics are gaining more interest. The analysis also proves the effectiveness of the utilized topic extraction and topic frequency analysis in research trend analysis, and this trend analysis scheme is expected to be used for research trend analysis in other research fields. In addition, the analysis can provide insight into how deep learning will evolve in the near future, and provide guidance for select research topics and methodologies by informing researchers of research topics and methodologies which are recently attracting attention.

Big Data News Analysis in Healthcare Using Topic Modeling and Time Series Regression Analysis (토픽모델링과 시계열 회귀분석을 활용한 헬스케어 분야의 뉴스 빅데이터 분석 연구)

  • Eun-Jung Kim;Suk-Gwon Chang;Sang-Yong Tom Lee
    • Information Systems Review
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    • v.25 no.3
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    • pp.163-177
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    • 2023
  • This research aims to identify key initiatives and a policy approach to support the industrialization of the sector. The research collected a total of 91,873 news data points relating to healthcare between 2013 to 2022. A total of 20 topics were derived through topic modeling analysis, and as a result of time series regression analysis, 4 hot topics (Healthcare, Biopharmaceuticals, Corporate outlook·Sales, Government·Policy), 3 cold topics (Smart devices, Stocks·Investment, Urban development·Construction) derived a significant topic. The research findings will serve as an important data source for government institutions that are engaged in the formulation and implementation of Korea's policies.

Exploring Key Topics and Trends of Government-sponsored R&D Projects in Future Automotive Fields: LDA Topic Modeling Approach (미래 자동차 분야 국가연구개발사업의 주요 연구 토픽과 투자 동향 분석: LDA 토픽모델링을 중심으로)

  • Ma Hyoung Ryul;Lee Cheol-Ju
    • Journal of Korea Society of Industrial Information Systems
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    • v.29 no.1
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    • pp.31-48
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    • 2024
  • The domestic automotive industry must consider a strategic shift from traditional automotive component manufacturing to align with future trends such as connectivity, autonomous driving, sharing, and electrification. This research conducted topic modeling on R&D projects in the future automotive sector funded by the Ministry of Trade, Industry, and Energy from 2013 to 2021. We found that topics such as sensors, communication, driver assistance technology, and battery and power technology remained consistently prominent throughout the entire period. Conversely, topics like high-strength lightweight chassis were observed only in the first period, while topics like AI, big data, and hydrogen fuel cells gained increasing importance in the second and third periods. Furthermore, this research analyzed the areas of concentrated investment for each period based on topic-specific government investment amounts and investment growth rates.

Topic Modeling of Newspaper Articles on Government 'Senior job program' via Latent Dirichlet Allocation. (잠재디리클레할당 분석을 이용한 '노인일자리' 관련 신문기사 토픽분석)

  • Lee, So-Chung
    • Journal of Digital Convergence
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    • v.18 no.10
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    • pp.537-546
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    • 2020
  • This study aims to find the structure of social disussion on government 'Senior job program' by analyzing 1107 newspaper articles on 'senior job program' from 11 major newspaper articles and 8 financial newspapers. Topic modeling via latent dirichlet allocation model was employed for analysis and as result, 5 latent topics were extracted as follows : general information, local government project propaganda, senior life related issues, employment creation effect and market relations. Until 2015, most of the articles focused on the first two topics, indicating not much discourse was formed concerning the characteristics of the program. However, after 2015, the third topic started to increase and after the launch of Moon Jae In government, there has been a drastic increase in the employment creation related topic indicating that current social discourse mirrored by the media is definitely focused on employment creation aspect of senior job program. Based on the result, this study suggests the necessity to increase the quality and also enhance employment aspects of Senior job program.

Research Trend Analysis on Living Lab Using Text Mining (텍스트 마이닝을 이용한 리빙랩 연구동향 분석)

  • Kim, SeongMook;Kim, YoungJun
    • Journal of Digital Convergence
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    • v.18 no.8
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    • pp.37-48
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    • 2020
  • This study aimed at understanding trends of living lab studies and deriving implications for directions of the studies by utilizing text mining. The study included network analysis and topic modelling based on keywords and abstracts from total 166 thesis published between 2011 and November 2019. Centrality analysis showed that living lab studies had been conducted focusing on keywords like innovation, society, technology, development, user and so on. From the topic modelling, 5 topics such as "regional innovation and user support", "social policy program of government", "smart city platform building", "technology innovation model of company" and "participation in system transformation" were extracted. Since the foundation of KNoLL in 2017, the diversification of living lab study subjects has been made. Quantitative analysis using text mining provides useful results for development of living lab studies.

A Study on the Document Topic Extraction System Based on Big Data (빅데이터 기반 문서 토픽 추출 시스템 연구)

  • Hwang, Seung-Yeon;An, Yoon-Bin;Shin, Dong-Jin;Oh, Jae-Kon;Moon, Jin Yong;Kim, Jeong-Joon
    • The Journal of the Institute of Internet, Broadcasting and Communication
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    • v.20 no.5
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    • pp.207-214
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    • 2020
  • Nowadays, the use of smart phones and various electronic devices is increasing, the Internet and SNS are activated, and we live in the flood of information. The amount of information has grown exponentially, making it difficult to look at a lot of information, and more and more people want to see only key keywords in a document, and the importance of research to extract topics that are the core of information is increasing. In addition, it is also an important issue to extract the topic and compare it with the past to infer the current trend. Topic modeling techniques can be used to extract topics from a large volume of documents, and these extracted topics can be used in various fields such as trend prediction and data analysis. In this paper, we inquire the topic of the three-year papers of 2016, 2017, and 2018 in the field of computing using the LDA algorithm, one of Probabilistic Topic Model Techniques, in order to analyze the rapidly changing trends and keep pace with the times. Then we analyze trends and flows of research.

COVID-19 and Korean Family Life on Social Media: A Topic Model Approach (소셜 빅데이터로 알아본 코로나19와 가족생활: 토픽모델 접근)

  • Park, Sunyoung;Lee, Jaerim
    • The Journal of the Korea Contents Association
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    • v.21 no.3
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    • pp.282-300
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    • 2021
  • The purpose of this study was to explore what social media posts tell us about family life during the COVID-19 pandemic by examining the keywords and topics underlying posts on blogs and online forums. Our criteria for web crawling were (a) blog and forum posts on Naver and Daum, the top portal sites in Korea, (b) posts between February 23 and April 19, 2020, the period of the first heightened social distancing orders, and (c) inclusion of "COVID" and "family" or "COVID" and "home." We analyzed 351,734 posts using TF-IDF values and topic modeling based on latent Dirichlet allocation. We identified and named 22 topics including COVID-19 prevention, family infection, family health, dietary life and changes, religious life, stuck at home, postponed school year, family events, travel and vacations, concerns about family and friends, anxiety and stress, disaster and damage, COVID-19 warning text messages, family support policies, Shin-cheon-ji and Daegu. The results show that COVID-19 impacted various domains of family life including health, food, housing, religion, child care, education, rituals, and leisure as well as relationships and emotions.

Tweets analysis using a Dynamic Topic Modeling : Focusing on the 2019 Koreas-US DMZ Summit (트윗의 타임 시퀀스를 활용한 DTM 분석 : 2019 남북미정상회동 이벤트를 중심으로)

  • Ko, EunJi;Choi, SunYoung
    • Journal of the Korea Institute of Information and Communication Engineering
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    • v.25 no.2
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    • pp.308-313
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    • 2021
  • In this study, tweets about the 2019 Koreas-US DMZ Summit were collected along with a time sequence and analyzed by a sequential topic modeling method, Dynamic Topic Modeling(DTM). In microblogging services such as Twitter, unstructured data that mixes news and an opinion about a single event occurs at the same time on a large scale, and information and reactions are produced in the same message format. Therefore, to grasp a topic trend, the contextual meaning can be found only by performing pattern analysis reflecting the characteristics of sequential data. As a result of calculating the DTM after obtaining the topic coherence score and evaluating the Latent Dirichlet Allocation(LDA), 30 topics related to news reports and opinions were derived, and the probability of occurrence of each topic and keywords were dynamically evolving. In conclusion, the study found that DTM is a suitable model for analyzing the trend of integrated topics in a specific event over time.