• Title/Summary/Keyword: Domain Model

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부산 연안역에서의 국지풍모델을 이용한 이류확산 수치모의 (Numerical Simulation of Advection and Diffusion using the Local Wind Model in Pusan Coastal Area, Korea)

  • 김유근;이화운;전병일
    • 한국대기환경학회지
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    • 제12권1호
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    • pp.29-41
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    • 1996
  • The two-stage numerical model was used to study the relation between three-dimensional local wind model, advection/diffusion model of random walk method and second moment method on Pusan coastal area. The first stage is three dimensional time-dependent local wind model which gives the wind field and vertical dirrusion coefficient. The second stage is advection/diffusion model which uses the results of the first stage as input data. First, wind fields on Pusan coastal area for none synoptic scale wind showed typical land and sea breeze circulation, and convergence zone occured at 1200LST in northern of domain, in succession, moved northward of domain. Emissions from Sinpyeong industrial district were trasnported toward the inland by sea breeze during daytime, and reached the end part of domain about 1800LST. During nighttime, emissions return to sea by land breeze and vertical diffusion also contributes to upward transport. In order to use this model for forecast of air pollution concentration on the Pusan coastal area, it is necessary that computed value must be compared with measured value and wind fields model must also be dealt in detail.

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

  • 한민아;김윤하;김남규
    • 지능정보연구
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    • 제28권4호
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    • pp.251-273
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    • 2022
  • 최근 텍스트 분석을 딥러닝에 적용한 연구가 꾸준히 이어지고 있으며, 특히 대용량의 데이터 셋을 학습한 사전학습 언어모델을 통해 단어의 의미를 파악하여 요약, 감정 분류 등의 태스크를 수행하려는 연구가 활발히 이루어지고 있다. 하지만 기존 사전학습 언어모델이 특정 도메인을 잘 이해하지 못한다는 한계를 나타냄에 따라, 최근 특정 도메인에 특화된 언어모델을 만들고자 하는 방향으로 연구의 흐름이 옮겨가고 있는 추세이다. 도메인 특화 추가 사전학습 언어모델은 특정 도메인의 지식을 모델이 더 잘 이해할 수 있게 하여, 해당 분야의 다양한 태스크에서 성능 향상을 가져왔다. 하지만 도메인 특화 추가 사전학습은 해당 도메인의 말뭉치 데이터를 확보하기 위해 많은 비용이 소요될 뿐 아니라, 고성능 컴퓨팅 자원과 개발 인력 등의 측면에서도 많은 비용과 시간이 투입되어야 한다는 부담이 있다. 아울러 일부 도메인에서 추가 사전학습 후의 성능 개선이 미미하다는 사례가 보고됨에 따라, 성능 개선 여부가 확실하지 않은 상태에서 도메인 특화 추가 사전학습 모델의 개발에 막대한 비용을 투입해야 하는지 여부에 대해 판단이 어려운 상황이다. 이러한 상황에도 불구하고 최근 각 도메인의 성능 개선 자체에 초점을 둔 추가 사전학습 연구는 다양한 분야에서 수행되고 있지만, 추가 사전학습을 통한 성능 개선에 영향을 미치는 도메인의 특성을 규명하기 위한 연구는 거의 이루어지지 않고 있다. 본 논문에서는 이러한 한계를 극복하기 위해, 실제로 추가 사전학습을 수행하기 전에 추가 사전학습을 통한 해당 도메인의 성능 개선 정도를 선제적으로 확인할 수 있는 방안을 제시한다. 구체적으로 3개의 도메인을 분석 대상 도메인으로 선정한 후, 각 도메인에서의 추가 사전학습을 통한 분류 정확도 상승 폭을 측정한다. 또한 각 도메인에서 사용된 주요 단어들의 정규화된 빈도를 기반으로 해당 도메인의 특수성을 측정하는 지표를 새롭게 개발하여 제시한다. 사전학습 언어모델과 3개 도메인의 도메인 특화 사전학습 언어모델을 사용한 분류 태스크 실험을 통해, 도메인 특수성 지표가 높을수록 추가 사전학습을 통한 성능 개선 폭이 높음을 확인하였다.

Assessing Resilience of Inter-Domain Routing System under Regional Failures

  • Liu, Yujing;Peng, Wei;Su, Jinshu;Wang, Zhilin
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제10권4호
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    • pp.1630-1642
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    • 2016
  • Inter-domain routing is the most critical function of the Internet. The routing system is a logical network relying on the physical infrastructure with geographical characteristics. Nature disasters or disruptive accidents such as earthquakes, cable cuts and power outages could cause regional failures which fail down geographically co-located network nodes and links, therefore, affect the resilience of inter-domain routing system. This paper presents a model for regional failures in inter-domain routing system called REFER for the first time. Based on REFER, the resilience of the inter-domain routing system could be evaluated on a finer level of the Internet, considering different routing policies of intra-domain and inter-domain routing systems. Under this model, we perform simulations on an empirical topology of the Internet with geographical characteristics to simulate a regional failure locating at a city with important IXP (Internet eXchange Point). Results indicate that the Internet is robust under a city-level regional failure. The reachability is almost the same after the failure, and the reroutings occur at the edge of the Internet, hardly affecting the core of inter-domain routing system.

ESTIMATING THE DOMAIN OF ATTRACTION VIA MOMENT MATRICES

  • Li, Chunji;Ryoo, Cheon-Seoung;Li, Ning;Cao, Lili
    • 대한수학회보
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    • 제46권6호
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    • pp.1237-1248
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    • 2009
  • The domain of attraction of a nonlinear differential equations is the region of initial points of solution tending to the equilibrium points of the systems as the time going. Determining the domain of attraction is one of the most important problems to investigate nonlinear dynamical systems. In this article, we first present two algorithms to determine the domain of attraction by using the moment matrices. In addition, as an application we consider a class of SIRS infection model and discuss asymptotical stability by Lyapunov method, and also estimate the domain of attraction by using the algorithms.

불완전 디버깅 환경에서 Input Domain에 기초한 소프트웨어 신뢰성 성장 모델 (An Input Domain-Based Software Reliability Growth Model In Imperfect Debugging Environment)

  • Park, Joong-Yang;Kim, Young-Soon;Hwang, Yang-Sook
    • 정보처리학회논문지D
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    • 제9D권4호
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    • pp.659-666
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    • 2002
  • Park, Seo and Kim은 소프트웨어의 시험단계와 유지보수단계에 모두 적용할 수 있는 입력 영역 기반 소프트웨어 신뢰성 성장 모델을 개발하였다. 이들의 모형은 완전디버깅의 가정 하에서 개발되어졌다. 입력 영역 기반 소프트웨어 신뢰성 성장 모델이 현실적이기 위해서는 이러한 가정은 개선되어야 한다. 본 논문에서는 불완전 디버깅 하에서 사용할 수 있는 입력 영역 기반 소프트웨어 신뢰성 성장 모델을 제안하고 그 통계적 특성을 조사한다.

Language Model Adaptation Based on Topic Probability of Latent Dirichlet Allocation

  • Jeon, Hyung-Bae;Lee, Soo-Young
    • ETRI Journal
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    • 제38권3호
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    • pp.487-493
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    • 2016
  • Two new methods are proposed for an unsupervised adaptation of a language model (LM) with a single sentence for automatic transcription tasks. At the training phase, training documents are clustered by a method known as Latent Dirichlet allocation (LDA), and then a domain-specific LM is trained for each cluster. At the test phase, an adapted LM is presented as a linear mixture of the now trained domain-specific LMs. Unlike previous adaptation methods, the proposed methods fully utilize a trained LDA model for the estimation of weight values, which are then to be assigned to the now trained domain-specific LMs; therefore, the clustering and weight-estimation algorithms of the trained LDA model are reliable. For the continuous speech recognition benchmark tests, the proposed methods outperform other unsupervised LM adaptation methods based on latent semantic analysis, non-negative matrix factorization, and LDA with n-gram counting.

Style-Specific Language Model Adaptation using TF*IDF Similarity for Korean Conversational Speech Recognition

  • Park, Young-Hee;Chung, Min-Hwa
    • The Journal of the Acoustical Society of Korea
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    • 제23권2E호
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    • pp.51-55
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    • 2004
  • In this paper, we propose a style-specific language model adaptation scheme using n-gram based tf*idf similarity for Korean spontaneous speech recognition. Korean spontaneous speech shows especially different style-specific characteristics such as filled pauses, word omission, and contraction, which are related to function words and depend on preceding or following words. To reflect these style-specific characteristics and overcome insufficient data for training language model, we estimate in-domain dependent n-gram model by relevance weighting of out-of-domain text data according to their n-. gram based tf*idf similarity, in which in-domain language model include disfluency model. Recognition results show that n-gram based tf*idf similarity weighting effectively reflects style difference.

증배형 부하회복 모델을 포함하는 연속법 기반 준정적 해석 (Continuation-Based Quasi-Steady-State Analysis Incorporating Multiplicative Load Restoration Model)

  • 송화창
    • 제어로봇시스템학회논문지
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    • 제14권2호
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    • pp.111-117
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    • 2008
  • This paper presents a new continuation-based quasi-steady-state(CQSS) time-domain simulation algorithm incorporating a multiplicative aggregated load model for power systems. The authors' previous paper introduced a CQSS algorithm, which has the robust convergent characteristic near the singularity point due to the application of a continuation method. The previous CQSS algorithm implemented the load restoration in power systems using the exponent-based load recovery model that is derived from the additive dynamic load model. However, the reformulated exponent-based model causes the inappropriate variation of short-term load characteristics when switching actions occur, during time-domain simulation. This paper depicts how to incorporate a multiplicative load restoration model, which does not have the problem of deforming short-term load characteristics, into the time simulation algorithm, and shows an illustrative example with a 39-bus test system.

Policy Management for BGP Routing Convergence Using Inter-AS Relationship

  • Jeong, Sang-Jin;Youn, Chan-Hyun;Park, Tae-Sang;Jeong, Tae-Soo;Lee, Daniel;Min, Kyoung-Seon
    • Journal of Communications and Networks
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    • 제3권4호
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    • pp.342-350
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    • 2001
  • The Internet routing instability, or the rapid fluctuation of network reachability information, is an important problem currently facing the Internet engineering community. High levels of network instability can lead to packet loss, increased network latency, and delayed routing convergence. At the extreme, high levels of routing instability can lead to the loss of internal connectivity in wide-area networks. In this paper, we investigate the variation of domain degree and domain count of the inter-domain network over time by using linear regression model in order to analyze the topology variation of inter-domain network. We Also propose an efficient policy management model to reduce the instability in the inter-domain routing system. The proposed model can be used to identify whether a routing policy is adequate to reduce convergence time that is required to return to a normal state when BGP routing instability happens. Experimental analysis shows that the proposed model can be used to set up routing policy in domains for the purpose of minimizing the effects and the propagation of BGP routing instability.

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A cross-domain access control mechanism based on model migration and semantic reasoning

  • Ming Tan;Aodi Liu;Xiaohan Wang;Siyuan Shang;Na Wang;Xuehui Du
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제18권6호
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    • pp.1599-1618
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    • 2024
  • Access control has always been one of the effective methods to protect data security. However, in new computing environments such as big data, data resources have the characteristics of distributed cross-domain sharing, massive and dynamic. Traditional access control mechanisms are difficult to meet the security needs. This paper proposes CACM-MMSR to solve distributed cross-domain access control problem for massive resources. The method uses blockchain and smart contracts as a link between different security domains. A permission decision model migration method based on access control logs is designed. It can realize the migration of historical policy to solve the problems of access control heterogeneity among different security domains and the updating of the old and new policies in the same security domain. Meanwhile, a semantic reasoning-based permission decision method for unstructured text data is designed. It can achieve a flexible permission decision by similarity thresholding. Experimental results show that the proposed method can reduce the decision time cost of distributed access control to less than 28.7% of a single node. The permission decision model migration method has a high decision accuracy of 97.4%. The semantic reasoning-based permission decision method is optimal to other reference methods in vectorization and index time cost.