• Title/Summary/Keyword: 도메인 공학

Search Result 467, Processing Time 0.03 seconds

Term Extraction for Ontology Concept Recognition in Wikipedia (Wikipedia에서 온톨로지 개념 인식을 위한 핵심어 추출)

  • Ko, Byeong-Kyu;Kim, Pan-Koo
    • Proceedings of the Korea Information Processing Society Conference
    • /
    • 2010.04a
    • /
    • pp.344-347
    • /
    • 2010
  • 최근 주목받고 있는 의미적 정보처리의 지식베이스인 온톨로지는 정형화된 표현을 통해 정확한 지식 처리와 추론관계를 명시해야 하기 때문에 온톨로지 확장에 대한 중요성 역시 강조되고 있다. 온톨로지 확장을 위한 기존의 방법들은 전문가를 통한 수작업 형태이거나 보편화된 사전이나 시소러스 집단의 분석을 통한 통계의 확률분포를 이용하는 반자동화된 방법들이 있다. 이에 본 논문에서는 Wikipedia에서 특정 도메인 문서들만을 수집한 후 중요문장 추출과정을 통해 해당 문서 내의 핵심어를 파악하여 이를 온톨로지의 개념 인식을 위한 정보로 활용할 수 있는 방안을 제시하고자 한다.

A New N-ary Entities Relation Approach for User Query Mean Desicion (사용자 질의 의미 결정을 위한 새로운 N-ary 개체 관계 디자인 패턴)

  • Su-Kyoung Kim;Kee-Hong Ahn
    • Proceedings of the Korea Information Processing Society Conference
    • /
    • 2008.11a
    • /
    • pp.635-638
    • /
    • 2008
  • 본 연구는 웹이나 정보 검색 환경에서 사용자로부터 입력되는 단순한 키워드 형태의 질의가 아닌 문장형태의 질의에 있어 문장이 내포하는 질의의 의미를 결정하여 더 정확한 검색 결과를 제공하기 위해 온톨로지 내 개념들 간의 속성간 연결을 위해 A-Box 기반의 관계 선언과 새로운 N-ary 개체 관계 방법을 제안한다. 특히 개념 개체들 간의 의미를 더 정확히 결정하기 위해 기존의 N-ary 개체 관계 방법이 갖고 있는 속성에 가중치를 포함하는 것이 아니라 가중치에 관련된 새로운 개체를 생성 패턴을 제시하여 특정 개념에 연관된 개념들의 관련성 결정의 성능을 높이도록 하였다. 본 연구의 실험에 있어 사용자가 입력한 병증의 문장을 결정하기 위해, A-Box 기반의 관계 선언과 N-ary 디자인 패턴에 결합하는 지식 도메인 온톨로지 등을 구축하였으며, 이를 통한 실험 결과 문장의 의미에 따른 더 정확한 결과를 보여주었다.

Decision Feedback Sequence Equalization for Maritime Wireless Communication (해상 무선 통신에서 결정 피드백을 이용한 시퀀스 등화 방법에 대한 연구)

  • 송경희;지민기;박정철;정성윤;전태현
    • Proceedings of the Korean Institute of Navigation and Port Research Conference
    • /
    • 2023.11a
    • /
    • pp.152-153
    • /
    • 2023
  • 해상 무선 통신에서 신호 다중 경로로 인하여 장거리 데이터 통신에 어려움이 있을 수 있다. 이를 해소하기 위하여 채널 등화 기술을 사용할 수 있다. 제안하는 채널 등화 기술은 비터비 알고리즘을 이용한 시퀀스 신호 검출로 구현의 복잡도를 낮추기 위하여 결정 피드백 방식을 이용하여 트랠리스 상태의 개수를 줄였다. 16QAM과 심볼 속도 76.8kHz의 신호에 대하여 10usec와 30usec 지연 시간 차이를 갖는 2-way 신호 경로의 채널 모델에 대한 컴퓨터 모의 시험을 수행하였다. 제안한 등화 기술을 사용할 경우 고려한 다중 신호 경로에 대하여 수신 오류율에서 error flow가 관찰되지 않는 것을 확인하였다.

  • PDF

KNU Korean Sentiment Lexicon: Bi-LSTM-based Method for Building a Korean Sentiment Lexicon (Bi-LSTM 기반의 한국어 감성사전 구축 방안)

  • Park, Sang-Min;Na, Chul-Won;Choi, Min-Seong;Lee, Da-Hee;On, Byung-Won
    • Journal of Intelligence and Information Systems
    • /
    • v.24 no.4
    • /
    • pp.219-240
    • /
    • 2018
  • Sentiment analysis, which is one of the text mining techniques, is a method for extracting subjective content embedded in text documents. Recently, the sentiment analysis methods have been widely used in many fields. As good examples, data-driven surveys are based on analyzing the subjectivity of text data posted by users and market researches are conducted by analyzing users' review posts to quantify users' reputation on a target product. The basic method of sentiment analysis is to use sentiment dictionary (or lexicon), a list of sentiment vocabularies with positive, neutral, or negative semantics. In general, the meaning of many sentiment words is likely to be different across domains. For example, a sentiment word, 'sad' indicates negative meaning in many fields but a movie. In order to perform accurate sentiment analysis, we need to build the sentiment dictionary for a given domain. However, such a method of building the sentiment lexicon is time-consuming and various sentiment vocabularies are not included without the use of general-purpose sentiment lexicon. In order to address this problem, several studies have been carried out to construct the sentiment lexicon suitable for a specific domain based on 'OPEN HANGUL' and 'SentiWordNet', which are general-purpose sentiment lexicons. However, OPEN HANGUL is no longer being serviced and SentiWordNet does not work well because of language difference in the process of converting Korean word into English word. There are restrictions on the use of such general-purpose sentiment lexicons as seed data for building the sentiment lexicon for a specific domain. In this article, we construct 'KNU Korean Sentiment Lexicon (KNU-KSL)', a new general-purpose Korean sentiment dictionary that is more advanced than existing general-purpose lexicons. The proposed dictionary, which is a list of domain-independent sentiment words such as 'thank you', 'worthy', and 'impressed', is built to quickly construct the sentiment dictionary for a target domain. Especially, it constructs sentiment vocabularies by analyzing the glosses contained in Standard Korean Language Dictionary (SKLD) by the following procedures: First, we propose a sentiment classification model based on Bidirectional Long Short-Term Memory (Bi-LSTM). Second, the proposed deep learning model automatically classifies each of glosses to either positive or negative meaning. Third, positive words and phrases are extracted from the glosses classified as positive meaning, while negative words and phrases are extracted from the glosses classified as negative meaning. Our experimental results show that the average accuracy of the proposed sentiment classification model is up to 89.45%. In addition, the sentiment dictionary is more extended using various external sources including SentiWordNet, SenticNet, Emotional Verbs, and Sentiment Lexicon 0603. Furthermore, we add sentiment information about frequently used coined words and emoticons that are used mainly on the Web. The KNU-KSL contains a total of 14,843 sentiment vocabularies, each of which is one of 1-grams, 2-grams, phrases, and sentence patterns. Unlike existing sentiment dictionaries, it is composed of words that are not affected by particular domains. The recent trend on sentiment analysis is to use deep learning technique without sentiment dictionaries. The importance of developing sentiment dictionaries is declined gradually. However, one of recent studies shows that the words in the sentiment dictionary can be used as features of deep learning models, resulting in the sentiment analysis performed with higher accuracy (Teng, Z., 2016). This result indicates that the sentiment dictionary is used not only for sentiment analysis but also as features of deep learning models for improving accuracy. The proposed dictionary can be used as a basic data for constructing the sentiment lexicon of a particular domain and as features of deep learning models. It is also useful to automatically and quickly build large training sets for deep learning models.

A Study on Predictive Preservation of Equipment Management System with Integrated Intelligent IoT (지능형 IoT를 융합한 장비 운용 시스템의 예지 보전을 위한 연구)

  • Lee, Sang-Deok;Kim, Young-Gon
    • The Journal of the Institute of Internet, Broadcasting and Communication
    • /
    • v.22 no.6
    • /
    • pp.83-89
    • /
    • 2022
  • Internet of Things technology is rapidly developing due to the recent development of information and communication technology. IoT technology utilizes various sensors to generate unique data from each sensor, enabling diagnosis of system status. However, the equipment management system currently in effect is a post-preservation concept in which administrators must deal with the problem after the problem occurs, which could mean system reliability and availability problems due to system errors, and could result in economic losses due to negative productivity disruptions. Therefore, this study confirmed that edge controller control decision algorithms for more efficient operation of rectifiers in the factory by applying intelligent IoT (AIoT) technology and domain knowledge-based modeling for each sensor data collected based on this, outputting appropriate status messages for each scenario.

Development of a Translator for Automatic Generation of Ubiquitous Metaservice Ontology (유비쿼터스 메타서비스 온톨로지 자동 생성을 위한 번역기 개발)

  • Lee, Mee-Yeon;Lee, Jung-Won;Park, Seung-Soo;Cho, We-Duke
    • Journal of the Korea Society of Computer and Information
    • /
    • v.14 no.1
    • /
    • pp.191-203
    • /
    • 2009
  • To provide dynamic services for users in ubiquitous computing environments by considering context in real-time, in our previous work we proposed Metaservice concept, the description specification and the process for building a Metaservice library. However, our previous process generates separated models - UML, OWL, OWL-S based models - from each step, so it did not provide the established method for translation between models. Moreover, it premises aid of experts in various ontology languages, ontology editing tools and the proposed Metaservice specification. In this paper, we design the translation process from domain ontology in OWL to Metaservice Library in OWL-S and develop a visual tool in order to enable non-experts to generate consistent models and to construct a Metaservice library. The purpose of the Metaservice Library translation process is to maintain consistency in all models and to automatically generate OWL-S code for Metaservice library by integrating existing OWL model and Metaservice model.

A Method for Prediction of Quality Defects in Manufacturing Using Natural Language Processing and Machine Learning (자연어 처리 및 기계학습을 활용한 제조업 현장의 품질 불량 예측 방법론)

  • Roh, Jeong-Min;Kim, Yongsung
    • Journal of Platform Technology
    • /
    • v.9 no.3
    • /
    • pp.52-62
    • /
    • 2021
  • Quality control is critical at manufacturing sites and is key to predicting the risk of quality defect before manufacturing. However, the reliability of manual quality control methods is affected by human and physical limitations because manufacturing processes vary across industries. These limitations become particularly obvious in domain areas with numerous manufacturing processes, such as the manufacture of major nuclear equipment. This study proposed a novel method for predicting the risk of quality defects by using natural language processing and machine learning. In this study, production data collected over 6 years at a factory that manufactures main equipment that is installed in nuclear power plants were used. In the preprocessing stage of text data, a mapping method was applied to the word dictionary so that domain knowledge could be appropriately reflected, and a hybrid algorithm, which combined n-gram, Term Frequency-Inverse Document Frequency, and Singular Value Decomposition, was constructed for sentence vectorization. Next, in the experiment to classify the risky processes resulting in poor quality, k-fold cross-validation was applied to categorize cases from Unigram to cumulative Trigram. Furthermore, for achieving objective experimental results, Naive Bayes and Support Vector Machine were used as classification algorithms and the maximum accuracy and F1-score of 0.7685 and 0.8641, respectively, were achieved. Thus, the proposed method is effective. The performance of the proposed method were compared and with votes of field engineers, and the results revealed that the proposed method outperformed field engineers. Thus, the method can be implemented for quality control at manufacturing sites.

Site-specific Dye-labeling of the Bacterial Cell Surface by Bioconjugation and Self-assembly (바이오접합과 자가결합을 이용한 박테리아 세포막의 위치 특이적 형광 표지)

  • Yang, I Ji;Lim, Sung In
    • Korean Chemical Engineering Research
    • /
    • v.60 no.3
    • /
    • pp.398-406
    • /
    • 2022
  • The outer membrane of Gram-negative bacteria is the outermost layer of cellular environment in which numerous biophysical and biochemical processes are in action sustaining viability. Advances in cell engineering enable modification of bacterial genetic information that subsequently alters membrane physiology to adapt bacteria to specific purposes. Surface display of a functional molecule on the outer membranes is one of strategies that directs host cells to respond to a specific extracellular matter or stimulus. While intracellular expression of a functional peptide or protein fused to a membrane-anchoring motif is commonly practiced for surface display, the method is not readily applicable to exogenous or large proteins inexpressible in bacteria. Chemical conjugation at reactive groups naturally occurring on the membrane might be an alternative, but often compromises fitness due to non-specific modification of essential components. Herein, we demonstrated two distinct approaches that enable site-specific decoration of the outer membrane with a fluorescent agent in Escherichia coli. An unnatural amino acid genetically incorporated in a surface-exposed peptide could act as a chemoselective handle for bioorthogonal dye labeling. A surface-displayed α-helical domain originating from a part of a selected heterodimeric coiled-coil complex could recruit and anchor a green fluorescent protein tagged with a complementary α-helical domain to the membrane surface in a site- and hetero-specific manner. These methods hold a promise as on-demand tools to confer new functionalities on the bacterial membranes.

A 2-Dimensional Approach for Analyzing Variability of Domain Core Assets (도메인 핵심자산의 가변성 분석을 위한 2차원적 접근방법)

  • Moon Mi-Kyeong;Chae Heung-Seok;Yeom Keun-Hyuk
    • Journal of KIISE:Software and Applications
    • /
    • v.33 no.6
    • /
    • pp.550-563
    • /
    • 2006
  • Software product line engineering is a method that prepares for the future reuse and supports to seamless reuse in application development process. Commonality and variability play central roles in all product line development processes. Reusable assets will become core assets by explicitly representing C&V. Indeed, the variabilities that art identified at each phase of core assets development have different levels of abstraction. In the past, these variabilities have been handled in an implicit manner and without distinguishing the characteristics of each core assets. In addition, previous approaches have depended on the experience and intuition of a domain expert to recognize commonality and variability. In this paper, we suggest a 2-dimensional analyzing method that analyzes the variabilities of core assets in software product line. In horizontal analysis process, the variation types are analyzed in requirements, architecture, and component that are produced at each phase of development process. In vertical analysis process, variations are analyzed in different abstract levels, in which the region of commonality is identified and the variation points are refined. By this method, the traceability of variations between core assets will be possible and core assets can be reused seamlessly.

Korean Morphological Analysis Method Based on BERT-Fused Transformer Model (BERT-Fused Transformer 모델에 기반한 한국어 형태소 분석 기법)

  • Lee, Changjae;Ra, Dongyul
    • KIPS Transactions on Software and Data Engineering
    • /
    • v.11 no.4
    • /
    • pp.169-178
    • /
    • 2022
  • Morphemes are most primitive units in a language that lose their original meaning when segmented into smaller parts. In Korean, a sentence is a sequence of eojeols (words) separated by spaces. Each eojeol comprises one or more morphemes. Korean morphological analysis (KMA) is to divide eojeols in a given Korean sentence into morpheme units. It also includes assigning appropriate part-of-speech(POS) tags to the resulting morphemes. KMA is one of the most important tasks in Korean natural language processing (NLP). Improving the performance of KMA is closely related to increasing performance of Korean NLP tasks. Recent research on KMA has begun to adopt the approach of machine translation (MT) models. MT is to convert a sequence (sentence) of units of one domain into a sequence (sentence) of units of another domain. Neural machine translation (NMT) stands for the approaches of MT that exploit neural network models. From a perspective of MT, KMA is to transform an input sequence of units belonging to the eojeol domain into a sequence of units in the morpheme domain. In this paper, we propose a deep learning model for KMA. The backbone of our model is based on the BERT-fused model which was shown to achieve high performance on NMT. The BERT-fused model utilizes Transformer, a representative model employed by NMT, and BERT which is a language representation model that has enabled a significant advance in NLP. The experimental results show that our model achieves 98.24 F1-Score.