• 제목/요약/키워드: Goodness of fit approach

검색결과 68건 처리시간 0.031초

Distributing data in Virtual-reality: factors influencing purchase intention of cutting tools

  • JITKUSOLRUNGRUENG, Nitichai;VONGURAI, Rawin
    • 유통과학연구
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    • 제19권9호
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    • pp.41-52
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    • 2021
  • Purpose: Virtual reality is a unique technology to distribute data and demonstrates user's understanding towards complex products. The objective of this research is to investigate the impact of virtual reality on real world purchase intention of automotive cutting tools in Thailand's exhibitions. Hence, the research framework was constructed by telepresence, perception narrative, authenticity, trustworthiness, functional value, aesthetics, and purchase intention. Research design, data and methodology: Samples were collected from 500 visitors who participated in the selected top two metalworking exhibitions. Mix sampling approach is applied by using non-probability sampling methods of purposive or judgmental sampling, quota sampling, and convenience sampling method, respectively to reach target samples. Confirmatory Factor Analysis (CFA) and Structural Equation Model (SEM) were used to analyze and confirm goodness-of-fit of the model and hypothesis testing. Results: The results indicate that authenticity, functional value, and trustworthiness induced higher experiential value towards purchase intention. Those variables are stimulated by telepresence and perception narrative towards VR experience. Conclusions: Consumer's purchase intention towards VR experience on engineering cutting tools rely on consumer's sense of authenticity, trustworthiness, and functional value. Hence, marketing practitioners in automotive companies are encouraged to develop VR which focusing on significant factors to enhance consumers purchase intention.

공동주택 공종별 수선비용 예측모델 연구 - 옥상방수 공사와 승강기 공사를 중심으로 - (The Forecasting Model of the Repair Cost in Apartment Housing - Focused roof water proofing and Elevator work -)

  • 이강희;채창우
    • KIEAE Journal
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    • 제15권6호
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    • pp.63-68
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    • 2015
  • Purpose: Most if buildings need various repair works for preventing or delaying the deterioration which gives rise to affect the living condition or function after constructed. Therefore, a long-term repair schedule should be planned and a repair cost is required. In this paper, it aimed at providing the statistical forecast model for a repair cost in roof water-proofing work and elevator work using statistical approach with three variables such as number of household, management area and a elapsed year. Data are collected in apartment housings which are located in Seoul area and conducted with interview and questionnaire sheet. Each analyzed work is divided into a partly work and fully work. Results of this study are shown that, first, the regression model takes a multiplying type like a Cobb-Douglas function and is changed into the log-linear type to include the three variable simultaneously. Second, the goodness-of-fit of the repair cost forecasting model has a good statistics in determinant's coefficient and Dubin-Watson value. Third, the management area is stronger factor than other the number of household and an elapsed year in roof water-proofing work and elevator work.

베이즈 추정방식의 품질우수성지수 적용 방안에 관한 연구 (A Study on the Bayes Estimation Application for Korean Standard-Quality Excellence Index(KS-QEI))

  • 김태규;김명준
    • 품질경영학회지
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    • 제42권4호
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    • pp.747-756
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    • 2014
  • Purpose: The purpose of this study is to apply the Bayesian estimation methodology for producing 'Korean Standard -Quality Excellence Index' model and prove the effectiveness of the new approach based on survey data by comparing the current index with the new index produced by Bayesian estimation method. Methods: The 'Korean Standard -Quality Excellence Index' was produced through the collected survey data by Bayesian estimation method and comparing the deviation with two results for confirming the effectiveness of suggested application. Results: The statistical analysis result shows that suggested estimator, that is, empirical Bayes estimator improves the effectiveness of the index with regard to reduce the error under specific loss function, which is suggested for checking the goodness of fit. Conclusion: Considering the Bayesian techniques such as empirical Bayes estimator for producing the quality excellence index reduces the error for estimating the parameter of interest and furthermore various Bayesian perspective approaches seems to be meaningful for producing the corresponding index.

퇴행성 관절염 환자를 대상으로 새로운 진통제 평가를 위한 임상시험자료의 GEE 분석 (Analysis of Repeated Measured VAS in a Clinical Trial for Evaluating a New NSAID with GEE Method)

  • 임회정;김윤이;정영복;성상철;안진환;노권재;김정만;박병주
    • Journal of Preventive Medicine and Public Health
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    • 제37권4호
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    • pp.381-389
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    • 2004
  • Objective : To compare the efficacy between SKI306X and Diclofenac by using generalized estimating equations (GEE) methodology in the analysis of correlated bivariate binary outcome data in Osteoarthritis (OA) diseases. Methods : A randomized, double-blind, active comparator-controlled, non-inferiority clinical trial was conducted at 5 institutions in Korea with the random assignment of 248 patients aged 35 to 75 years old with OA of the knee and clinical evidence of OA. Patients were enrolled in this study if they had at least moderate pain in the affected knee joint and a score larger than 35mm as assessed by VAS (Visual Analog Scale). The main exposure variable was treatment (SKI 306X vs. Diclofenac) and other covariates were age, sex, BMI, baseline VAS, center, operation history (Yes/No), NSAIDS (Y/N), acupuncture (Y/N), herbal medicine (Y/N), past history of musculoskeletal disease (Y/N), and previous therapy related with OA (Y/N). The main study outcome was the change of VAS pain scores from baseline to the 2nd and 4th weeks after treatment. Pain scores were obtained as baseline, 2nd and 4th weeks after treatment. We applied GEE approach with empirical covariance matrix and independent(or exchangeable) working correlation matrix to evaluate the relation of several risk factors to the change of VAS pain scores with correlated binary bivariate outcomes. Results : While baseline VAS, age, and acupuncture variables had protective effects for reducing the OA pain, its treatment (Joins/Diclofenac) was not statistically significant through GEE methodology (ITT:aOR=1.37, 95% CI=(0.8200, 2.26), PP:aOR=1.47, 95% CI=(0.73, 2.95)). The goodness-of-fit statistic for GEE (6.55, p=0.68) was computed to assess the adequacy of the fitted final model. Conclusions : Both ANCOVA and GEE methods yielded non statistical significance in the evaluation of non-inferiority of the efficacy between SKI306X and Diclofenac. While VAS outcome for each visit was applied in GEE, only VAS outcome for the fourth visit was applied in ANCOVA. So the GEE methodology is more accurate for the analysis of correlated outcomes.

Simple Forecasting of Surface Ozone through a Statistical Approach

  • Ma, Chang-Jin;Kang, Gong-Unn
    • 한국환경보건학회지
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    • 제44권6호
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    • pp.539-547
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    • 2018
  • Objectives: Ozone ($O_3$) advisories are issued by provincial/prefectural and city governments in Korea and Japan when oxidant concentrations exceed the criteria of the related country. Advisories issued only after exposure to high $O_3$ concentrations cannot be considered ideal measures. Forecasts of $O_3$ would be more beneficial to citizens' health and daily life than real-time advisories. The present study was undertaken to present a simplified forecasting model that can predict surface $O_3$ concentrations for the afternoon of the day of the forecast. Methods: For the construction of a simple and practical model, a multivariate regression model was applied. The monitored data on gases and climate variables from Japan's air quality networks that were recorded over nearly one year starting from April 2016 were applied as the subject for our model. Results: A well-known inverse correlation between $NO_2$ and $O_3$ was confirmed by the monitored data for Iksan, Korea and Fukuoka, Japan. Typical time fluctuations for $O_3$ and $NO_x$ were also found. Our model suggests that insolation is the most influential factor in determining the concentration of $O_3$. $CH_4$ also plays a major role in our model. It was possible to visually check for the fit of a theoretical distribution to the observed data by examining the probability-probability (P-P) scatter plot. The goodness of fit of the model in this study was also successfully validated through a comparison (r=0.8, p<0.05) of the measured and predicted $O_3$ concentrations. Conclusions: The advantage of our model is that it is capable of immediate forecasting of surface $O_3$ for the afternoon of the day from the routinely measured values of the precursor and meteorological parameters. Although a comparison to other approaches for $O_3$ forecasting was not carried out, the model suggested in this study would be very helpful for the citizens of Korea and Japan, especially during the $O_3$ season from May to June.

확률적 위험도분석을 이용한 ITS사업의 경제성평가모형 (Development of Evaluation Model for ITS Project using the Probabilistic Risk Analysis)

  • 이용택;남두희;임강원
    • 대한교통학회지
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    • 제23권3호
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    • pp.95-108
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    • 2005
  • 본 연구는 결정적 경제성분석모형(Deterministic Economic Analysis : DEA)의 한계를 극복할 수 있는 확률적 위험도분석(Probabilistic Risk Analysis : PRA) 모형을 이용하여 ITS사업의 경제성평가모형을 개발하고 사례분석을 통해 모형의 적합성(Goodness-of-fit)과 유용성을 검증하는 것이다. 즉 ITS사업의 경제성에 영향을 미치는 위험변수를 확률밀도함수(PDF), 누적확률밀도함수(CDF)로 산출하고 몬테카를로 시뮬레이션기법(Monte-Carlo Simulation Approach : MCSA)을 통해 산출된 결과변수(사업비, 경제성지표)의 통계값에 대해 합리적인 의사결정 방법론을 정립하였다. 대규모 지방자치단체 ITS사업의 사례분석(대전광역시 첨단교통모델도시사업) 수행결과, 통합시스템의 사업비 총사업비는 PRA모형을 통해 산출된 확률분포 상에서 편의(Bias)된 백분율값으로 나타났으며, 사업비 총사업비의 변동계수가(각각 15, 4) 일반교통사업에 비해 낮아, ITS사업의 위험도가 높은 것으로 나타났다. 또한 PRA모형의 결과변수(B/C, NPA, IRP)가 변동가능한 사업환경 하에서 90%이상 모두 경제성이 있는 것으로 나타났다. 그러나 총사업비 사업비의 우발성비용(목표관리값 85%기준)이 발생하는 것으로 나타나 경제성은 높으나 사업비 초과 위험도는 높은 사업으로 분류되었다. 또한 DEA모형의 경제성평가지표는 PRA모형의 확률분포 상에 단일 %값(B/C:27%값, NPV:27%값, IRR:33%값)으로 나타나며, 평균값 또는 중앙값과 비교할 때, 경제성이 과소추정(Underestimate)되는 것으로 나타났다. 또한 단위시스템의 우선순위결과정에서 모형에 따라 우선순위가 바꾸는 결과가 나타났다. 특히 대규모 ITS사업의 경제성평가 시 DEA모형이 편의된 하나의 사례만으로 경제성을 평가함으로써, 경제성을 과대 과소추정하거나 비합리적인 투자우선 순위를 도출하는 오류를 범할수 있는 것으로 나타났다.

New approach to calculate Weibull parameters and comparison of wind potential of five cities of Pakistan

  • Ahmed Ali Rajput;Muhammad Daniyal;Muhammad Mustaqeem Zahid;Hasan Nafees;Misha Shafi;Zaheer Uddin
    • Advances in Energy Research
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    • 제8권2호
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    • pp.95-110
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    • 2022
  • Wind energy can be utilized for the generation of electricity, due to significant wind potential at different parts of the world, some countries have already been generating of electricity through wind. Pakistan is still well behind and has not yet made any appreciable effort for the same. The objective of this work was to add some new strategies to calculate Weibull parameters and assess wind energy potential. A new approach calculates Weibull parameters; we also developed an alternate formula to calculate shape parameters instead of the gamma function. We obtained k (shape parameter) and c (scale parameter) for two-parameter Weibull distribution using five statistical methods for five different cities in Pakistan. Maximum likelihood method, Modified Maximum likelihood Method, Method of Moment, Energy Pattern Method, Empirical Method, and have been to calculate and differentiate the values of (shape parameter) k and (scale parameter) c. The performance of these five methods is estimated using the Goodness-of-Fit Test, including root mean square error, mean absolute bias error, mean absolute percentage error, and chi-square error. The daily 10-minute average values of wind speed data (obtained from energydata.info) of different cities of Pakistan for the year 2016 are used to estimate the Weibull parameters. The study finds that Hyderabad city has the largest wind potential than Karachi, Quetta, Lahore, and Peshawar. Hyderabad and Karachi are two possible sites where wind turbines can produce reasonable electricity.

Model-Based Survival Estimates of Female Breast Cancer Data

  • Khan, Hafiz Mohammad Rafiqullah;Saxena, Anshul;Gabbidon, Kemesha;Rana, Sagar;Ahmed, Nasar Uddin
    • Asian Pacific Journal of Cancer Prevention
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    • 제15권6호
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    • pp.2893-2900
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    • 2014
  • Background: Statistical methods are very important to precisely measure breast cancer patient survival times for healthcare management. Previous studies considered basic statistics to measure survival times without incorporating statistical modeling strategies. The objective of this study was to develop a data-based statistical probability model from the female breast cancer patients' survival times by using the Bayesian approach to predict future inferences of survival times. Materials and Methods: A random sample of 500 female patients was selected from the Surveillance Epidemiology and End Results cancer registry database. For goodness of fit, the standard model building criteria were used. The Bayesian approach is used to obtain the predictive survival times from the data-based Exponentiated Exponential Model. Markov Chain Monte Carlo method was used to obtain the summary results for predictive inference. Results: The highest number of female breast cancer patients was found in California and the lowest in New Mexico. The majority of them were married. The mean (SD) age at diagnosis (in years) was 60.92 (14.92). The mean (SD) survival time (in months) for female patients was 90.33 (83.10). The Exponentiated Exponential Model found better fits for the female survival times compared to the Exponentiated Weibull Model. The Bayesian method is used to obtain predictive inference for future survival times. Conclusions: The findings with the proposed modeling strategy will assist healthcare researchers and providers to precisely predict future survival estimates as the recent growing challenges of analyzing healthcare data have created new demand for model-based survival estimates. The application of Bayesian will produce precise estimates of future survival times.

Statistical Estimates from Black Non-Hispanic Female Breast Cancer Data

  • Khan, Hafiz Mohammad Rafiqullah;Ibrahimou, Boubakari;Saxena, Anshul;Gabbidon, Kemesha;Abdool-Ghany, Faheema;Ramamoorthy, Venkataraghavan;Ullah, Duff;Stewart, Tiffanie Shauna-Jeanne
    • Asian Pacific Journal of Cancer Prevention
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    • 제15권19호
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    • pp.8371-8376
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    • 2014
  • Background: The use of statistical methods has become an imperative tool in breast cancer survival data analysis. The purpose of this study was to develop the best statistical probability model using the Bayesian method to predict future survival times for the black non-Hispanic female breast cancer patients diagnosed during 1973-2009 in the U.S. Materials and Methods: We used a stratified random sample of black non-Hispanic female breast cancer patient data from the Surveillance Epidemiology and End Results (SEER) database. Survival analysis was performed using Kaplan-Meier and Cox proportional regression methods. Four advanced types of statistical models, Exponentiated Exponential (EE), Beta Generalized Exponential (BGE), Exponentiated Weibull (EW), and Beta Inverse Weibull (BIW) were utilized for data analysis. The statistical model building criteria, Akaike Information Criteria (AIC), Bayesian Information Criteria (BIC), and Deviance Information Criteria (DIC) were used to measure the goodness of fit tests. Furthermore, we used the Bayesian approach to obtain the predictive survival inferences from the best-fit data based on the exponentiated Weibull model. Results: We identified the highest number of black non-Hispanic female breast cancer patients in Michigan and the lowest in Hawaii. The mean (SD), of age at diagnosis (years) was 58.3 (14.43). The mean (SD), of survival time (months) for black non-Hispanic females was 66.8 (30.20). Non-Hispanic blacks had a significantly increased risk of death compared to Black Hispanics (Hazard ratio: 1.96, 95%CI: 1.51-2.54). Compared to other statistical probability models, we found that the exponentiated Weibull model better fits for the survival times. By making use of the Bayesian method predictive inferences for future survival times were obtained. Conclusions: These findings will be of great significance in determining appropriate treatment plans and health-care cost allocation. Furthermore, the same approach should contribute to build future predictive models for any health related diseases.

문화관광축제 방문객의 평가속성 만족과 행동의도에 관한 연구 - 2006 광주김치대축제를 중심으로 - (The Effects of Evaluation Attributes of Cultural Tourism Festivals on Satisfaction and Behavioral Intention)

  • 김정훈
    • 마케팅과학연구
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    • 제17권2호
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    • pp.55-73
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    • 2007
  • 문화관광축제는 전국의 지역축제 가운데 광역시 도에서 추천한 축제 가운데 관광상품성이 크고, 경쟁력 있는 우수한 축제를 선정하여 지원하는 사업이다. 문화관광축제 종합평가계획(문화관광부, 2006)에 의하면 방문객의 만족도 평가, 전문위원 평가, 그리고 축제 개선실적 등을 감안하여 최우수축제, 우수축제, 유망축제, 예비축제로 선정되고 있다. 특히 예비축제를 제외한 문화관광축제는 공공부문의 사업비 지원을 받기 때문에 1,000여 개가 넘는 지역축제의 방문객 만족도 평가는 상호비교가 가능한 평가척도를 이용하여 종합평가분석이 이루어진고 있다. 이러한 견지에서 본 연구에서는 문화관광축제 공통평가속성이 방문객 만족과 사후행동의도에 미치는 영향관계를 파악하여, 향후 축제기획 시 방문객 만족도 제고와 지속가능한 문화관광축제로 선정되기 위한 시사점을 제시하였다. 본 연구에서는 이론연구를 통하여 문화관광축제 평가속성, 만족, 그리고 행위의도에 관한 변수를 도출하였으며, 2006 광주김치대축제 방문객을 대상으로 실증분석을 수행하였다. 문화관광축제 평가속성에 대한 요인분석을 통하여 홍보안내, 행사내용, 기념품 음식, 편의시설 요인을 도출하였으며, 축제방문객 만족과 행동의도와의 관계를 분석하였다. 연구모형을 통해 수립한 연구가설은 차이분석, 회귀분석, 공분산 구조분석 등을 통해 검증하였으며, 연구결과 모든 가설은 채택되었다. 향후 본 연구결과를 바탕으로 본 축제와 성격이 유사한 축제방문객 분석을 통한 비교연구를 기대한다.

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