• Title/Summary/Keyword: Specialized Research Domain

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Revising the Korean Newspaper Advertising Code of Ethics: An Empirical Investigation Leveraging Expert Interviews and Analytic Hierarchy Process (AHP) Surveys

  • Yoo, Seung-Chul;Kang, Seung-Mi
    • International Journal of Internet, Broadcasting and Communication
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    • v.15 no.3
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    • pp.135-148
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    • 2023
  • The Code of Ethics for Newspaper Advertising in Korea, first implemented in 1976 and subsequently revised in 1976, 1996, and 2021, is a critical regulatory instrument for the country's advertising sector. However, the specialized domain of "advertising ethics," particularly the "code of advertising ethics," remains under-explored. This research addresses this scholarly gap, providing an empirical analysis of the 2021 amendment's revision trajectory. This study employs a robust methodological approach, integrating expert interviews and small-group AHP-based surveys. This approach allows for a comprehensive understanding of the revision needs, referencing existing ethical codes studies, and comparing similar ethics codes nationally and internationally. The research further investigates key challenges such as personal data protection and copyright issues in the rapidly evolving digital media landscape, while preserving the existing code's inherent value. The findings are expected to significantly contribute to the emerging field of advertising ethics in Korea, offering practical implications for future code revisions.

The Metaverse in Construction: Foundations, Frameworks, and Potentials

  • Akeem Pedro;Mehrtash Soltani;Rahat Hussain;Chansik Park
    • International conference on construction engineering and project management
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    • 2024.07a
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    • pp.599-605
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    • 2024
  • In an era marked by rapid technological advancements, the term "metaverse" has emerged at the forefront of discussions, yet its conceptualization remains nebulous, especially in specialized domains such as construction. The metaverse represents an interconnected digital realm where physical and virtual realities converge, enabling transformative experiences and collaborations. This study seeks to disambiguate the notion of the metaverse, particularly contextualizing it within the construction industry's paradigm. By juxtaposing the metaverse with existing technologies like Building Information Modeling (BIM) and digital twins, this paper elucidates the unique technological components that would define a construction-centric metaverse. This paper highlights precepts and requirements for a construction domain metaverse. Potential applications of the metaverse within construction settings are explored, offering practitioners insights into avenues for research and development. This research aims to offer a guide for industry professionals, technologists, and researchers, providing clarity on harnessing the metaverse's capabilities effectively and setting the foundation for its meaningful integration in construction endeavors.

An Analytical Study on Research Trends of Library and Information Science in Korea : 1957∼2002 (한국의 문헌정보학분야 연구동향 분석 : 1957∼2002)

  • 손정표
    • Journal of Korean Library and Information Science Society
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    • v.34 no.3
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    • pp.9-32
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    • 2003
  • This study is to represent the research trends of the library & information science in Korea through an analysis of papers on journals of 7 library & information science societies, collection of papers in celebration of the founding of 16 departments of library & information science and journals published at 3 specialized institutions from 1957 through 2002. The result of this study are as follows : The average yearly papers: in the case of journals published at the specialized institutions - 42.6 pieces; in the case of the academic journals - 63.1 pieces. The year published the largest nmber of papers: 2002; the order of the number of papers by the domain of library & information science: information science, bibliography, library management, organizing library materials, public service, foundations of library & information science, history of books & libraries, collection development.

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The Effect of Domain Specificity on the Performance of Domain-Specific Pre-Trained Language Models (도메인 특수성이 도메인 특화 사전학습 언어모델의 성능에 미치는 영향)

  • Han, Minah;Kim, Younha;Kim, Namgyu
    • Journal of Intelligence and Information Systems
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    • v.28 no.4
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    • pp.251-273
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    • 2022
  • Recently, research on applying text analysis to deep learning has steadily continued. In particular, researches have been actively conducted to understand the meaning of words and perform tasks such as summarization and sentiment classification through a pre-trained language model that learns large datasets. However, existing pre-trained language models show limitations in that they do not understand specific domains well. Therefore, in recent years, the flow of research has shifted toward creating a language model specialized for a particular domain. Domain-specific pre-trained language models allow the model to understand the knowledge of a particular domain better and reveal performance improvements on various tasks in the field. However, domain-specific further pre-training is expensive to acquire corpus data of the target domain. Furthermore, many cases have reported that performance improvement after further pre-training is insignificant in some domains. As such, it is difficult to decide to develop a domain-specific pre-trained language model, while it is not clear whether the performance will be improved dramatically. In this paper, we present a way to proactively check the expected performance improvement by further pre-training in a domain before actually performing further pre-training. Specifically, after selecting three domains, we measured the increase in classification accuracy through further pre-training in each domain. We also developed and presented new indicators to estimate the specificity of the domain based on the normalized frequency of the keywords used in each domain. Finally, we conducted classification using a pre-trained language model and a domain-specific pre-trained language model of three domains. As a result, we confirmed that the higher the domain specificity index, the higher the performance improvement through further pre-training.

Optimizing Language Models through Dataset-Specific Post-Training: A Focus on Financial Sentiment Analysis (데이터 세트별 Post-Training을 통한 언어 모델 최적화 연구: 금융 감성 분석을 중심으로)

  • Hui Do Jung;Jae Heon Kim;Beakcheol Jang
    • Journal of Internet Computing and Services
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    • v.25 no.1
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    • pp.57-67
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    • 2024
  • This research investigates training methods for large language models to accurately identify sentiments and comprehend information about increasing and decreasing fluctuations in the financial domain. The main goal is to identify suitable datasets that enable these models to effectively understand expressions related to financial increases and decreases. For this purpose, we selected sentences from Wall Street Journal that included relevant financial terms and sentences generated by GPT-3.5-turbo-1106 for post-training. We assessed the impact of these datasets on language model performance using Financial PhraseBank, a benchmark dataset for financial sentiment analysis. Our findings demonstrate that post-training FinBERT, a model specialized in finance, outperformed the similarly post-trained BERT, a general domain model. Moreover, post-training with actual financial news proved to be more effective than using generated sentences, though in scenarios requiring higher generalization, models trained on generated sentences performed better. This suggests that aligning the model's domain with the domain of the area intended for improvement and choosing the right dataset are crucial for enhancing a language model's understanding and sentiment prediction accuracy. These results offer a methodology for optimizing language model performance in financial sentiment analysis tasks and suggest future research directions for more nuanced language understanding and sentiment analysis in finance. This research provides valuable insights not only for the financial sector but also for language model training across various domains.

The Korean Military's Space Operations Strategy for Future Warfare (미래전을 대비한 한국군의 우주전 전략)

  • KWan-Soo Lim;Byung-Ki Min;Jung-Ho Eom
    • Convergence Security Journal
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    • v.24 no.3
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    • pp.195-202
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    • 2024
  • Future warfare is expected to be multi-domain operations including space, based on the development of advanced information and communication technologies. Advanced space-faring countries such as the United States, Russia, China, and Japan are creating space forces based on advanced space technology to prepare for future space warfare and strengthening cooperation with private companies and other countries. The South Korean military is preparing for space warfare for each type of weapon, but it is still relatively weak in terms of integrated strategy and technology. As not only advanced space countries but also North Korea is increasing its investment in space militarisation, the ROK military needs to develop a comprehensive plan and establish a specialized organisation to prepare for future space warfare. Therefore, this paper examines the current status of the ROK military's space warfare preparedness and proposes space warfare strategies such as establishing a dedicated space warfare and space cybersecurity organization, strengthening domestic and international cooperation, research and development and training of specialized personnel, and reestablishing a training system.

Assessment of Frozen Soil Characterization Via Electrical Resistivity Survey (전기비저항 탐사를 활용한 동결 지반의 거동 평가)

  • Jang, Byeong-Su;Kim, Young-Seok;Kim, Se-Won;Choi, Hyun-Jun;Yoon, Hyung-Koo
    • Journal of the Korean Geotechnical Society
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    • v.39 no.12
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    • pp.115-125
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    • 2023
  • In this study, we evaluated the behavior of frozen soil using an electrical resistivity survey method-a nondestructive technique-and examined its characteristics through field experiments. Frozen soil was artificially prepared by injecting fluid to accelerate the freezing process, and naturally frozen soil was selected in a nearby area for comparison. A dynamic cone penetration test (DCPT) was performed to compare the reliability of the electrical resistivity survey, and time-domain reflectometry surveys were performed to assess the moisture content of the ground. Field experiments were conducted in February-when the atmosphere temperature was below freezing-and May-when the temperature was above freezing. This temperature-compensated method was used to determine reliability because the behavior of frozen soil depends on the underlying temperature. In the resistivity survey method, a section of high electrical resistivity was observed under freezing conditions due to the frozen water and converted into porosity. The converted porosity was compared with the porosity inferred from the DCPT, and the results showed that the measured electrical resistivity was valid.

Development of Context Awareness and Service Reasoning Technique for Handicapped People (장애인을 위한 상황인식 및 서비스 추론기술 개발)

  • Ko, Kwang-Eun;Shin, Dong-Jun;Sim, Kwee-Bo
    • Journal of the Korean Institute of Intelligent Systems
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    • v.18 no.4
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    • pp.512-517
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    • 2008
  • It is show that increasing of aged and handicapped people requires development of Ubiquitous computing technique to offer the specialized service for handicapped-people. For this, we need a development of Context Awareness and Service Reasoning Technique that the technique is supplied interaction between user and U-environment instead of the old unilateral relation. The old research of context awareness needed probabilistic presentation model like a Bayesian Network based on expert Systems for recognize given circumstance by a domain of uncertain real world. In this article, we define a domain of disorder activity assistant service application and context model based on ontology in diversified environment and minimized intervention of user and developer. By use this context model, we apply the structure learning of Bayesian Network and decide the service and activity to development of application service for handicapped people. Finally, we define the proper Conditional Probability Table of the structured Bayesian Network and if random situation is given to user, then present state variable of Activity and Service by given Causal relation of Bayesian Network based on Conditional Probability Table and it can be result of context awareness.

A Corpus-based English Syntax Academic Word List Building and its Lexical Profile Analysis (코퍼스 기반 영어 통사론 학술 어휘목록 구축 및 어휘 분포 분석)

  • Lee, Hye-Jin;Lee, Je-Young
    • The Journal of the Korea Contents Association
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    • v.21 no.12
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    • pp.132-139
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    • 2021
  • This corpus-driven research expounded the compilation of the most frequently occurring academic words in the domain of syntax and compared the extracted wordlist with Academic Word List(AWL) of Coxhead(2000) and General Service List(GSL) of West(1953) to examine their distribution and coverage within the syntax corpus. A specialized 546,074 token corpus, composed of widely used must-read syntax textbooks for English education majors, was loaded into and analyzed with AntWordProfiler 1.4.1. Under the parameter of lexical frequency, the analysis identified 288(50.5%) AWL word forms, appeared 16 times or more, as well as 218(38.2%) AWL items, occurred not exceeding 15 times. The analysis also indicated that the coverage of AWL and GSL accounted for 9.19% and 78.92% respectively and the combination of GSL and AWL amounted to 88.11% of all tokens. Given that AWL can be instrumental in serving broad disciplinary needs, this study highlighted the necessity to compile the domain-specific AWL as a lexical repertoire to promote academic literacy and competence.

Deep Learning-based Professional Image Interpretation Using Expertise Transplant (전문성 이식을 통한 딥러닝 기반 전문 이미지 해석 방법론)

  • Kim, Taejin;Kim, Namgyu
    • Journal of Intelligence and Information Systems
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    • v.26 no.2
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    • pp.79-104
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    • 2020
  • Recently, as deep learning has attracted attention, the use of deep learning is being considered as a method for solving problems in various fields. In particular, deep learning is known to have excellent performance when applied to applying unstructured data such as text, sound and images, and many studies have proven its effectiveness. Owing to the remarkable development of text and image deep learning technology, interests in image captioning technology and its application is rapidly increasing. Image captioning is a technique that automatically generates relevant captions for a given image by handling both image comprehension and text generation simultaneously. In spite of the high entry barrier of image captioning that analysts should be able to process both image and text data, image captioning has established itself as one of the key fields in the A.I. research owing to its various applicability. In addition, many researches have been conducted to improve the performance of image captioning in various aspects. Recent researches attempt to create advanced captions that can not only describe an image accurately, but also convey the information contained in the image more sophisticatedly. Despite many recent efforts to improve the performance of image captioning, it is difficult to find any researches to interpret images from the perspective of domain experts in each field not from the perspective of the general public. Even for the same image, the part of interests may differ according to the professional field of the person who has encountered the image. Moreover, the way of interpreting and expressing the image also differs according to the level of expertise. The public tends to recognize the image from a holistic and general perspective, that is, from the perspective of identifying the image's constituent objects and their relationships. On the contrary, the domain experts tend to recognize the image by focusing on some specific elements necessary to interpret the given image based on their expertise. It implies that meaningful parts of an image are mutually different depending on viewers' perspective even for the same image. So, image captioning needs to implement this phenomenon. Therefore, in this study, we propose a method to generate captions specialized in each domain for the image by utilizing the expertise of experts in the corresponding domain. Specifically, after performing pre-training on a large amount of general data, the expertise in the field is transplanted through transfer-learning with a small amount of expertise data. However, simple adaption of transfer learning using expertise data may invoke another type of problems. Simultaneous learning with captions of various characteristics may invoke so-called 'inter-observation interference' problem, which make it difficult to perform pure learning of each characteristic point of view. For learning with vast amount of data, most of this interference is self-purified and has little impact on learning results. On the contrary, in the case of fine-tuning where learning is performed on a small amount of data, the impact of such interference on learning can be relatively large. To solve this problem, therefore, we propose a novel 'Character-Independent Transfer-learning' that performs transfer learning independently for each character. In order to confirm the feasibility of the proposed methodology, we performed experiments utilizing the results of pre-training on MSCOCO dataset which is comprised of 120,000 images and about 600,000 general captions. Additionally, according to the advice of an art therapist, about 300 pairs of 'image / expertise captions' were created, and the data was used for the experiments of expertise transplantation. As a result of the experiment, it was confirmed that the caption generated according to the proposed methodology generates captions from the perspective of implanted expertise whereas the caption generated through learning on general data contains a number of contents irrelevant to expertise interpretation. In this paper, we propose a novel approach of specialized image interpretation. To achieve this goal, we present a method to use transfer learning and generate captions specialized in the specific domain. In the future, by applying the proposed methodology to expertise transplant in various fields, we expected that many researches will be actively conducted to solve the problem of lack of expertise data and to improve performance of image captioning.