• 제목/요약/키워드: logistic model

검색결과 1,927건 처리시간 0.022초

An Analysis of Factors Relating to Agricultural Machinery Farm-Work Accidents Using Logistic Regression

  • Kim, Byounggap;Yum, Sunghyun;Kim, Yu-Yong;Yun, Namkyu;Shin, Seung-Yeoub;You, Seokcheol
    • Journal of Biosystems Engineering
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    • 제39권3호
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    • pp.151-157
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    • 2014
  • Purpose: In order to develop strategies to prevent farm-work accidents relating to agricultural machinery, influential factors were examined in this paper. The effects of these factors were quantified using logistic regression. Methods: Based on the results of a survey on farm-work accidents conducted by the National Academy of Agricultural Science, 21 tentative independent variables were selected. To apply these variables to regression, the presence of multicollinearity was examined by comparing correlation coefficients, checking the statistical significance of the coefficients in a simple linear regression model, and calculating the variance inflation factor. A logistic regression model and determination method of its goodness of fit was defined. Results: Among 21 independent variables, 13 variables were not collinear each other. The results of a logistic regression analysis using these variables showed that the model was significant and acceptable, with deviance of 714.053. Parameter estimation results showed that four variables (age, power tiller ownership, cognizance of the government's safety policy, and consciousness of safety) were significant. The logistic regression model predicted that the former two increased accident odds by 1.027 and 8.506 times, respectively, while the latter two decreased the odds by 0.243 and 0.545 times, respectively. Conclusions: Prevention strategies against factors causing an accident, such as the age of farmers and the use of a power tiller, are necessary. In addition, more efficient trainings to elevate the farmer's consciousness about safety must be provided.

로지스틱 회귀모형과 의사결정 나무모형을 활용한 청소년 자살 시도 예측모형 비교: 2019 청소년 건강행태 온라인조사를 이용한 2차 자료분석 (Comparison of the Prediction Model of Adolescents' Suicide Attempt Using Logistic Regression and Decision Tree: Secondary Data Analysis of the 2019 Youth Health Risk Behavior Web-Based Survey)

  • 이윤주;김희진;이예슬;정혜선
    • 대한간호학회지
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    • 제51권1호
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    • pp.40-53
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    • 2021
  • Purpose: The purpose of this study was to develop and compare the prediction model for suicide attempts by Korean adolescents using logistic regression and decision tree analysis. Methods: This study utilized secondary data drawn from the 2019 Youth Health Risk Behavior web-based survey. A total of 20 items were selected as the explanatory variables (5 of sociodemographic characteristics, 10 of health-related behaviors, and 5 of psychosocial characteristics). For data analysis, descriptive statistics and logistic regression with complex samples and decision tree analysis were performed using IBM SPSS ver. 25.0 and Stata ver. 16.0. Results: A total of 1,731 participants (3.0%) out of 57,303 responded that they had attempted suicide. The most significant predictors of suicide attempts as determined using the logistic regression model were experience of sadness and hopelessness, substance abuse, and violent victimization. Girls who have experience of sadness and hopelessness, and experience of substance abuse have been identified as the most vulnerable group in suicide attempts in the decision tree model. Conclusion: Experiences of sadness and hopelessness, experiences of substance abuse, and experiences of violent victimization are the common major predictors of suicide attempts in both logistic regression and decision tree models, and the predict rates of both models were similar. We suggest to provide programs considering combination of high-risk predictors for adolescents to prevent suicide attempt.

Logistic regression model for major separation rate

  • 최재성
    • Journal of the Korean Data and Information Science Society
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    • 제13권2호
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    • pp.129-138
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    • 2002
  • This paper deals with logistic regression models for analysing separation rates from majors. The model building procedure shows how to incoporate the effects of some factors causing from three-way nested sampling scheme and discusses what type of characteristics as independent variables directly affecting the rates should be considered.

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로지스틱모형에서 그래픽을 이용한 회귀와 모형평가 (Graphical regression and model assessment in logistic model)

  • 강명욱;김부용;홍주희
    • Journal of the Korean Data and Information Science Society
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    • 제21권1호
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    • pp.21-32
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    • 2010
  • 그래픽적 회귀는 모형에 대한 가정을 하지 않고 회귀정보를 모두 포함하는 충분요약그림을 찾아내는 분석 방법으로 모든 회귀정보를 저차원의 그림으로 표현할 수 있게 하는 데에 그 목적이 있다. 잔차산점도를 이용한 모형의 평가는 적용 범위가 선형회귀모형에 국한되는 문제점이 있기 때문에 일반화선형모형에서는 그 대안으로 주변모형 산점도를 이용하여 모형의 적절성을 평가한다. 본 논문에서는 일반화선형모형 중에서 이진반응변수를 갖는 로지스틱모형에서의 그래픽적 회귀 방법과 주변모형 산점도를 이용한 모형평가 방법을 알아본다.

A Study on the Insolvency Prediction Model for Korean Shipping Companies

  • Myoung-Hee Kim
    • 한국항해항만학회지
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    • 제48권2호
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    • pp.109-115
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    • 2024
  • To develop a shipping company insolvency prediction model, we sampled shipping companies that closed between 2005 and 2023. In addition, a closed company and a normal company with similar asset size were selected as a paired sample. For this study, data of a total of 82 companies, including 42 closed companies and 42 general companies, were obtained. These data were randomly divided into a training set (2/3 of data) and a testing set (1/3 of data). Training data were used to develop the model while test data were used to measure the accuracy of the model. In this study, a prediction model for Korean shipping insolvency was developed using financial ratio variables frequently used in previous studies. First, using the LASSO technique, main variables out of 24 independent variables were reduced to 9. Next, we set insolvent companies to 1 and normal companies to 0 and fitted logistic regression, LDA and QDA model. As a result, the accuracy of the prediction model was 82.14% for the QDA model, 78.57% for the logistic regression model, and 75.00% for the LDA model. In addition, variables 'Current ratio', 'Interest expenses to sales', 'Total assets turnover', and 'Operating income to sales' were analyzed as major variables affecting corporate insolvency.

세계 유선인터넷 서비스에 대한 확산모형의 예측력 비교 (Comparative Evaluation of Diffusion Models using Global Wireline Subscribers)

  • 민의정;임광선
    • Journal of Information Technology Applications and Management
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    • 제21권4_spc호
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    • pp.403-414
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    • 2014
  • Forecasting technology in economic activity is a quite intricate procedure so researchers should grasp the point of the data to use. Diffusion models have been widely used for forecasting market demand and measuring the degree of technology diffusion. However, there is a question that a model, explaining a certain market with goodness of fit, always shows good performance with markets of different conditions. The primary aim of this paper is to explore diffusion models which are frequently used by researchers, and to help readers better understanding on those models. In this study, Logistic, Gompertz and Bass models are used for forecasting Global Wireline Subscribers and the performance of models is measured by Mean Absolute Percentage Error. Logistic model shows better MAPE than the other two. A possible extension of this study may verify which model reflects characteristics of industry better.

Analysis of cause-of-death mortality and actuarial implications

  • Kwon, Hyuk-Sung;Nguyen, Vu Hai
    • Communications for Statistical Applications and Methods
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    • 제26권6호
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    • pp.557-573
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    • 2019
  • Mortality study is an essential component of actuarial risk management for life insurance policies, annuities, and pension plans. Life expectancy has drastically increased over the last several decades; consequently, longevity risk associated with annuity products and pension systems has emerged as a crucial issue. Among the various aspects of mortality study, a consideration of the cause-of-death mortality can provide a more comprehensive understanding of the nature of mortality/longevity risk. In this case study, the cause-of-mortality data in Korea and the US were analyzed along with a multinomial logistic regression model that was constructed to quantify the impact of mortality reduction in a specific cause on actuarial values. The results of analyses imply that mortality improvement due to a specific cause should be carefully monitored and reflected in mortality/longevity risk management. It was also confirmed that multinomial logistic regression model is a useful tool for analyzing cause-of-death mortality for actuarial applications.

분류모형과 DEA를 이용한 두뇌한국(BK) 21 사업단 효율성 분석 (Data Envelopment Analysis and Logistic Model for BRAIN KOREA 21)

  • 손소영;주용규
    • 산업공학
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    • 제17권3호
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    • pp.249-260
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    • 2004
  • The objective of this study is to measure and to predict the efficiency of participating groups of BK 21 by using DEA. DEA is a methodology to measure and to evaluate the relative efficiency of a homogeneous set of decision-making units (DMUs) in a process which uses multiple inputs to produce multiple outputs. In order to reflect the effect of the environmental factors of BK 21, we consider not only a general DEA model but also a logistic model for DEA. As a result, location of participating groups of BK 21 turns out to be significant. Our proposed approach can predict the efficiency of a new BK 21 group with given environmental factors. It is expected that these models can give a feedback for effective management of BK 21.

사례기반추론을 이용한 다이렉트 마케팅의 고객반응예측모형의 통합

  • 홍태호;박지영
    • 한국정보시스템학회지:정보시스템연구
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    • 제18권3호
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    • pp.375-399
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    • 2009
  • In this study, we propose a integrated model of logistic regression, artificial neural networks, support vector machines(SVM), with case-based reasoning(CBR). To predict respondents in the direct marketing is the binary classification problem as like bankruptcy prediction, IDS, churn management and so on. To solve the binary problems, we employed logistic regression, artificial neural networks, SVM. and CBR. CBR is a problem-solving technique and shows significant promise for improving the effectiveness of complex and unstructured decision making, and we can obtain excellent results through CBR in this study. Experimental results show that the classification accuracy of integration model using CBR is superior to logistic regression, artificial neural networks and SVM. When we apply the customer response model to predict respondents in the direct marketing, we have to consider from the view point of profit/cost about the misclassification.

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