• 제목/요약/키워드: Model Tree

검색결과 1,912건 처리시간 0.031초

The Parallel Corpus Approach to Building the Syntactic Tree Transfer Set in the English-to- Vietnamese Machine Translation

  • Dien Dinh;Ngan Thuy;Quang Xuan;Nam Chi
    • 대한전자공학회:학술대회논문집
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    • 대한전자공학회 2004년도 ICEIC The International Conference on Electronics Informations and Communications
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    • pp.382-386
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    • 2004
  • Recently, with the machine learning trend, most of the machine translation systems on over the world use two syntax tree sets of two relevant languages to learn syntactic tree transfer rules. However, for the English-Vietnamese language pair, this approach is impossible because until now we have not had a Vietnamese syntactic tree set which is correspondent to English one. Building of a very large correspondent Vietnamese syntactic tree set (thousands of trees) requires so much work and take the investment of specialists in linguistics. To take advantage from our available English-Vietnamese Corpus (EVC) which was tagged in word alignment, we choose the SITG (Stochastic Inversion Transduction Grammar) model to construct English- Vietnamese syntactic tree sets automatically. This model is used to parse two languages at the same time and then carry out the syntactic tree transfer. This English-Vietnamese bilingual syntactic tree set is the basic training data to carry out transferring automatically from English syntactic trees to Vietnamese ones by machine learning models. We tested the syntax analysis by comparing over 10,000 sentences in the amount of 500,000 sentences of our English-Vietnamese bilingual corpus and first stage got encouraging result $(analyzed\;about\;80\%)[5].$ We have made use the TBL algorithm (Transformation Based Learning) to carry out automatic transformations from English syntactic trees to Vietnamese ones based on that parallel syntactic tree transfer set[6].

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Dose Estimation Model for Terminal Buds in Radioactively Contaminated Fir Trees

  • Kawaguchi, Isao;Kido, Hiroko;Watanabe, Yoshito
    • Journal of Radiation Protection and Research
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    • 제47권3호
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    • pp.143-151
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    • 2022
  • Background: After the Fukushima Daiichi Nuclear Power Plant (FDNPP) accident, biological alterations in the natural biota, including morphological changes of fir trees in forests surrounding the power plant, have been reported. Focusing on the terminal buds involved in the morphological formation of fir trees, this study developed a method for estimating the absorbed radiation dose rate using radionuclide distribution measurements from tree organs. Materials and Methods: A phantom composed of three-dimensional (3D) tree organs was constructed for the three upper whorls of the fir tree. A terminal bud was evaluated using Monte Carlo simulations for the absorbed dose rate of radionuclides in the tree organs of the whorls. Evaluation of the absorbed dose targeted 131I, 134Cs, and 137Cs, the main radionuclides subsequent to the FDNPP accident. The dose contribution from each tree organ was calculated separately using dose coefficients (DC), which express the ratio between the average activity concentration of a radionuclide in each tree organ and the dose rate at the terminal bud. Results and Discussion: The dose estimation indicated that the radionuclides in the terminal bud and bud scale contributed to the absorbed dose rate mainly by beta rays, whereas those in 1-year-old trunk/branches and leaves were contributed by gamma rays. However, the dose contribution from radionuclides in the lower trunk/branches and leaves was negligible. Conclusion: The fir tree model provides organ-specific DC values, which are satisfactory for the practical calculation of the absorbed dose rate of radiation from inside the tree. These calculations are based on the measurement of radionuclide concentrations in tree organs on the 1-year-old leader shoots of fir trees. With the addition of direct gamma ray measurements of the absorbed dose rate from the tree environment, the total absorbed dose rate was estimated in the terminal bud of fir trees in contaminated forests.

수피 특징 추출을 위한 상용 DCNN 모델의 비교와 다층 퍼셉트론을 이용한 수종 인식 (Comparison of Off-the-Shelf DCNN Models for Extracting Bark Feature and Tree Species Recognition Using Multi-layer Perceptron)

  • 김민기
    • 한국멀티미디어학회논문지
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    • 제23권9호
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    • pp.1155-1163
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    • 2020
  • Deep learning approach is emerging as a new way to improve the accuracy of tree species identification using bark image. However, the approach has not been studied enough because it is confronted with the problem of acquiring a large volume of bark image dataset. This study solved this problem by utilizing a pretrained off-the-shelf DCNN model. It compares the discrimination power of bark features extracted by each DCNN model. Then it extracts the features by using a selected DCNN model and feeds them to a multi-layer perceptron (MLP). We found out that the ResNet50 model is effective in extracting bark features and the MLP could be trained well with the features reduced by the principal component analysis. The proposed approach gives accuracy of 99.1% and 98.4% for BarkTex and Trunk12 datasets respectively.

PLC로 제어되는 기계에서 Fault Tree를 효과적으로 생성하기 위한 LAT(Ladder Analysis Tool)개발 (LAT System for Fault Tree Generation)

  • 김선호;김동훈;김도연;한기상;김주한
    • 한국정밀공학회:학술대회논문집
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    • 한국정밀공학회 1997년도 추계학술대회 논문집
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    • pp.442-445
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    • 1997
  • A challenging activity in the manufacturing industry is to perform in real time the continuous monitoring of the process state, the situation assessment and identification of the problem on line and diagnosis of the cause and importance of the problem if he process does not work properly. This paper describes LAT(Ladder Analysis Tool) system for fault tree generation to improving the fault diagnosis of CNC machine tools. The system consists of 4 steps which can automatically ladder analysis from ladder diagram to two diagnosis function models. The two diagnostic models based on he ladder diagram is switching function model and step switching function model. This system tries to overcome diagnosis deficiencies present machine tool.

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Intelligent consistency checking method for the use case model

  • Lee, Eun-young;Shim, Woo-gon;Paik, In-sup
    • 한국산학기술학회:학술대회논문집
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    • 한국산학기술학회 2003년도 Proceeding
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    • pp.50-56
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    • 2003
  • In the development of complex software system, it is important to use hierarchical use case model due to the complex scope of development procedure. The use case model is core factor of the OMG (Object Management Group)'s UML (Unified Modeling Language) diagrams. In this paper, we propose a novel method to check syntactic consistency automatically in use case models at the different level of abstraction. This method is a rule-based approach which utilizes actor tree, use case tree and use case description. The proposed method is simulated on ITS (Intelligent Transportation System) architecture for the verification.

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통합 비교차 다중 분위수회귀나무 모형을 활용한 AI 면접체계 자료 분석 (Analysis of AI interview data using unified non-crossing multiple quantile regression tree model)

  • 김재오;방성완
    • 응용통계연구
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    • 제33권6호
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    • pp.753-762
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    • 2020
  • 본 연구는 대한민국 육군이 선도적으로 도입하고자 노력하고 있는 AI 면접체계의 자료를 통합 비교차 다중 분위수 회귀나무 모형(unified non-crossing multiple quantile tree; UNQRT)을 활용하여 분석한 것이다. 분위수 회귀가 일반적인 선형회귀에 비하여 많은 장점을 가지지만, 선형성 가정은 여전히 많은 현실 문제해결에 있어 지나치게 강한 가정이다. 선형성을 완화한 모형의 하나인 기존 나무모형 기반의 분위수 회귀는 추정된 분위수 함수별로 교차하는 문제와 분위수별로 나무모형을 제시하여 해석력을 저하시키는 문제가 있다. 통합 비교차 다중 분위수회귀나무 모형은 비교차 제약식을 부여한 상태로 다중 분위수 함수를 동시에 추정함으로서 분위수 함수의 교차 문제를 해결하며, 극단 분위수에서 안정된 결과를 기대할 수 있고, 하나의 통합된 나무모형을 제시하여 우수한 해석력이 있다. 본 연구에서는 통합 비교차 다중 분위수회귀나무 모형을 활용하여 육군 AI 면접체계의 결과와 기존 인사자료간 관계를 충분히 탐색하여 의미있는 다양한 결과를 도출하였다.

의사결정나무를 이용한 온라인 자동차 보험 고객 이탈 예측과 전략적 시사점 (Customer Churning Forecasting and Strategic Implication in Online Auto Insurance using Decision Tree Algorithms)

  • 임세현;허연
    • 경영정보학연구
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    • 제8권3호
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    • pp.125-134
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    • 2006
  • 본 연구에서는 온라인 자동차보험 고객 이탈 예측에 있어 의사결정나무를 적용하였다. 우리는 본 연구에서 2003년과 2004년 사이에 온라인 자동차 보험을 계약한 고객의 데이터를 이용하여 의사결정나무를 이용해 고객이탈을 예측하였다. 우리는 C5.0 알고리즘에 기반을 둔 의사결정나무의 예측 결과에 대한 비교를 위해 다변량판별분석과 로짓분석을 이용하였다. 분석결과 의사결정나무 알고리즘은 다른 기법보다 예측성과가 매우 뛰어난 것으로 나타났다. 이러한 실증분석 결과는 온라인 자동차 보험에 있어서 마케팅전략 수립에 유용한 가이드라인을 제공해 줄 것이다.

영국철도시스템에 적용된 리스크평가 사례 (Application Cases of Risk Assessment for British Railtrack System)

  • 이동하;정광태
    • 대한인간공학회지
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    • 제22권1호
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    • pp.81-94
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    • 2003
  • The British railway safety research group has developed a risk assessment model for the railway infrastructure and major railway accidents. The major hazardous factors of the railway infrastructure were identified and classified in the model. The frequency rates of critical top events were predicted by the fault tree analysis method using failure data of the railway system components and ratings of railway maintenance experts, The consequences of critical top events were predicted by the event tree analysis method. They classified the Joss of accident due to railway system into personal. commercial and environmental damages. They also classified 110 hazardous event due to railway system into three categories. train accident. movement accident and non-movement accident. The risk assessment model of the British railway system has been designed to take full account of both the high frequency low consequence type events (events occurring routinely for which there is significant quantity of recorded data) and the low frequency high consequence events (events occurring rarely for which there is little recorded data). The results for each hazardous event were presented in terms of the frequency of occurrence (number of events/year) and the risk (number of equivalent fatalities per year).

자연어를 이용한 요구사항 모델의 번역 기법 (Translation Technique of Requirement Model using Natural Language)

  • 오정섭;이혜련;임강빈;최경희;정기현
    • 정보처리학회논문지D
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    • 제15D권5호
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    • pp.647-658
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    • 2008
  • 자연어로 작성된 고객의 요구사항은 개발과정에서 모델링 언어로 재작성 된다. 그러나 개발에 참여하는 다양한 계층의 사람들은 모델링 언어로 작성된 요구사항을 이해하지 못하는 경우가 많이 발생한다. 본 논문에서는 REED(REquirement EDitor)로 작성된 요구사항 모델을 자연어로 번역하여 개발에 참여하는 모든 계층의 사람들이 요구사항 모델을 이해할 수 있도록 도와주는 방안을 제시한다. 제시한 방법은 3단계로 구성되어 있다. 1단계 IORT(Input-Output Relation Tree) 생성, 2단계 RTT(Requirement Translation Tree) 생성, 3단계 자연어로 번역의 단계를 거친다.

Real Time Current Prediction with Recurrent Neural Networks and Model Tree

  • Cini, S.;Deo, Makarand Chintamani
    • International Journal of Ocean System Engineering
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    • 제3권3호
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    • pp.116-130
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    • 2013
  • The prediction of ocean currents in real time over the warning times of a few hours or days is required in planning many operation-related activities in the ocean. Traditionally this is done through numerical models which are targeted toward producing spatially distributed information. This paper discusses a complementary method to do so when site-specific predictions are desired. It is based on the use of a recurrent type of neural network as well as the statistical tool of model tree. The measurements made at a site in Indian Ocean over a period of 4 years were used. The predictions were made over 72 time steps in advance. The models developed were found to be fairly accurate in terms of the selected error statistics. Among the two modeling techniques the model tree performed better showing the necessity of using distributed models for different sub-domains of data rather than a unique one over the entire input domain. Typically such predictions were associated with average errors of less than 2.0 cm/s. Although the prediction accuracy declined over longer intervals, it was still very satisfactory in terms of theselected error criteria. Similarly prediction of extreme values matched with that of the rest of predictions. Unlike past studies both east-west and north-south current components were predicted fairly well.