• 제목/요약/키워드: Regression modeling

검색결과 865건 처리시간 0.024초

다항식회귀분석을 이용한 기능성곡면의 모델링 (Modeling of functional surface using Polynomial Regression)

  • 윤상환;황종대;정윤교
    • 한국공작기계학회:학술대회논문집
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    • 한국공작기계학회 2002년도 추계학술대회 논문집
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    • pp.376-380
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    • 2002
  • This research presents modeling of a functional surface which is a constructed free-formed surface. The modeling introduced in this paper adopts polynomial regression that is utilizing approximating technique. The measured data are obtained from measuring with Coordinate Measuring Machine. This paper introduces efficient methods of Reverse Engineering using Polynomial Regression.

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Prediction of behavior of fresh concrete exposed to vibration using artificial neural networks and regression model

  • Aktas, Gultekin;Ozerdem, Mehmet Sirac
    • Structural Engineering and Mechanics
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    • 제60권4호
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    • pp.655-665
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    • 2016
  • This paper aims to develop models to accurately predict the behavior of fresh concrete exposed to vibration using artificial neural networks (ANNs) model and regression model (RM). For this purpose, behavior of a full scale precast concrete mold was investigated experimentally and numerically. Experiment was performed under vibration with the use of a computer-based data acquisition system. Transducers were used to measure time-dependent lateral displacements at some points on mold while both mold is empty and full of fresh concrete. Modeling of empty and full mold was made using both ANNs and RM. For the modeling of ANNs: Experimental data were divided randomly into two parts. One of them was used for training of the ANNs and the remaining part was used for testing the ANNs. For the modeling of RM: Sinusoidal regression model equation was determined and the predicted data was compared with measured data. Finally, both models were compared with each other. The comparisons of both models show that the measured and testing results are compatible. Regression analysis is a traditional method that can be used for modeling with simple methods. However, this study also showed that ANN modeling can be used as an alternative method for behavior of fresh concrete exposed to vibration in precast concrete structures.

A Study on Improving the predict accuracy rate of Hybrid Model Technique Using Error Pattern Modeling : Using Logistic Regression and Discriminant Analysis

  • Cho, Yong-Jun;Hur, Joon
    • Journal of the Korean Data and Information Science Society
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    • 제17권2호
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    • pp.269-278
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    • 2006
  • This paper presents the new hybrid data mining technique using error pattern, modeling of improving classification accuracy. The proposed method improves classification accuracy by combining two different supervised learning methods. The main algorithm generates error pattern modeling between the two supervised learning methods(ex: Neural Networks, Decision Tree, Logistic Regression and so on.) The Proposed modeling method has been applied to the simulation of 10,000 data sets generated by Normal and exponential random distribution. The simulation results show that the performance of proposed method is superior to the existing methods like Logistic regression and Discriminant analysis.

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Predictive Modeling of Competitive Biosorption Equilibrium Data

  • Chu K.H.;Kim E.Y.
    • Biotechnology and Bioprocess Engineering:BBE
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    • 제11권1호
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    • pp.67-71
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    • 2006
  • This paper compares regression and neural network modeling approaches to predict competitive biosorption equilibrium data. The regression approach is based on the fitting of modified Langmuir-type isotherm models to experimental data. Neural networks, on the other hand, are non-parametric statistical estimators capable of identifying patterns in data and correlations between input and output. Our results show that the neural network approach outperforms traditional regression-based modeling in correlating and predicting the simultaneous uptake of copper and cadmium by a microbial biosorbent. The neural network is capable of accurately predicting unseen data when provided with limited amounts of data for training. Because neural networks are purely data-driven models, they are more suitable for obtaining accurate predictions than for probing the physical nature of the biosorption process.

A random forest-regression-based inverse-modeling evolutionary algorithm using uniform reference points

  • Gholamnezhad, Pezhman;Broumandnia, Ali;Seydi, Vahid
    • ETRI Journal
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    • 제44권5호
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    • pp.805-815
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    • 2022
  • The model-based evolutionary algorithms are divided into three groups: estimation of distribution algorithms, inverse modeling, and surrogate modeling. Existing inverse modeling is mainly applied to solve multi-objective optimization problems and is not suitable for many-objective optimization problems. Some inversed-model techniques, such as the inversed-model of multi-objective evolutionary algorithm, constructed from the Pareto front (PF) to the Pareto solution on nondominated solutions using a random grouping method and Gaussian process, were introduced. However, some of the most efficient inverse models might be eliminated during this procedure. Also, there are challenges, such as the presence of many local PFs and developing poor solutions when the population has no evident regularity. This paper proposes inverse modeling using random forest regression and uniform reference points that map all nondominated solutions from the objective space to the decision space to solve many-objective optimization problems. The proposed algorithm is evaluated using the benchmark test suite for evolutionary algorithms. The results show an improvement in diversity and convergence performance (quality indicators).

MARS Modeling for Ordinal Categorical Response Data: A Case Study

  • Kim, Ji-Hyun
    • Communications for Statistical Applications and Methods
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    • 제7권3호
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    • pp.711-720
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    • 2000
  • A case study of modeling ordinal categorical response data with the MARS method is done. The study is to analyze the effect of some personal characteristics and socioeconomic status on the teenage marijuana use. The MARS method gave a new insight into the data set.

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The auto regression model of bus fleet failure number

  • Zhou, Y.
    • International Journal of Reliability and Applications
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    • 제12권2호
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    • pp.95-102
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    • 2011
  • This paper uses the auto regression model to modeling failure number of a bus fleet. The fitted model can be used to predict the failure number in the future. A numerical example is presented to illustrate the modeling process and the appropriateness of the fitted model. At last, some possible applications of the model are discussed.

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딥러닝을 이용한 다변량, 비선형, 과분산 모델링의 개선: 자동차 연료소모량 예측 (Improvement of Multivariable, Nonlinear, and Overdispersion Modeling with Deep Learning: A Case Study on Prediction of Vehicle Fuel Consumption Rate)

  • 한대석;유인균;이수형
    • 한국도로학회논문집
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    • 제19권4호
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    • pp.1-7
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    • 2017
  • PURPOSES : This study aims to improve complex modeling of multivariable, nonlinear, and overdispersion data with an artificial neural network that has been a problem in the civil and transport sectors. METHODS: Deep learning, which is a technique employing artificial neural networks, was applied for developing a large bus fuel consumption model as a case study. Estimation characteristics and accuracy were compared with the results of conventional multiple regression modeling. RESULTS : The deep learning model remarkably improved estimation accuracy of regression modeling, from R-sq. 18.76% to 72.22%. In addition, it was very flexible in reflecting large variance and complex relationships between dependent and independent variables. CONCLUSIONS : Deep learning could be a new alternative that solves general problems inherent in conventional statistical methods and it is highly promising in planning and optimizing issues in the civil and transport sectors. Extended applications to other fields, such as pavement management, structure safety, operation of intelligent transport systems, and traffic noise estimation are highly recommended.

가우시안 프로세서 회귀 기반의 비선형 구조방정식을 활용한 고분자 물성거동 예측 연구 (Study of Polymor Properties Prediction Using Nonlinear SEM Based on Gaussian Process Regression)

  • 문경렬;박건욱
    • 정보처리학회논문지:컴퓨터 및 통신 시스템
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    • 제13권1호
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    • pp.1-9
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    • 2024
  • 고분자 분야의 개발 및 양산과정에는 제어가 안되는 많은 변수가 있으며, 화학적 조성, 구조, 가공 조건 등 작은 변화에도 물성편차가 크게 발생하기에 보편적인 환경을 가정한 기존의 선형적 모델링 기법으로는 현장 데이터 적용시 많은 오차가 발생한다. 이에 본 연구에서는 최근 산업용 구동부품의 플라스틱 채용경향에 맞추어 엔지니어링 플라스틱인 Polyacetal 수지의 내마모성 및 내굴곡성 강화 연구에 다변량 분석기법인 구조방정식과 가우시안 프로세스 회귀를 결합한 모델링 방식(GPR-SEM)을 제안하고, 비선형성을 가지는 물질 모델링에 활용 가능성을 고찰하고자 한다.

준지도 지지 벡터 회귀 모델을 이용한 반응 모델링 (Response Modeling with Semi-Supervised Support Vector Regression)

  • 김동일
    • 한국컴퓨터정보학회논문지
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    • 제19권9호
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    • pp.125-139
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    • 2014
  • 본 논문에서는 준지도 지지 벡터 회귀 모델(semi-supervised support vector regression)을 이용한 반응 모델링(response modeling)을 제안한다. 반응 모델링의 성능 및 수익성을 높이기 위해, 고객 데이터 셋의 대부분을 차지하는 레이블이 존재하지 않는 데이터를 기존 레이블이 존재하는 데이터와 함께 학습에 이용한다. 제안하는 알고리즘은 학습 복잡도를 낮은 수준으로 유지하기 위해 일괄 학습(batch learning) 방식을 사용한다. 레이블 없는 데이터의 레이블 추정에서 불확실성(uncertainty)을 고려하기 위해, 분포추정(distribution estimation)을 하여 레이블이 존재할 수 있는 영역을 정의한다. 그리고 추정된 레이블 영역으로부터 오버샘플링(oversampling)을 통해 각 레이블이 없는 데이터에 대한 레이블을 복수 개 추출하여 학습 데이터 셋을 구성한다. 이 때, 불확실성의 정도에 따라 샘플링 비율을 다르게 함으로써, 불확실한 영역에 대해 더 많은 정보를 발생시킨다. 마지막으로 지능적 학습 데이터 선택 기법을 적용하여 학습 복잡도를 최종적으로 감소시킨다. 제안된 반응 모델링의 성능 평가를 위해, 실제 마케팅 데이터 셋에 대해 다양한 레이블 데이터 비율로 실험을 진행하였다. 실험 결과 제안된 준지도 지지 벡터 회귀 모델을 이용한 반응 모델이 기존 모델에 비해 더 높은 정확도 및 수익을 가질 수 있다는 점을 확인하였다.