• 제목/요약/키워드: prediction rate

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Analyzing Customer Management Data by Data Mining: Case Study on Chum Prediction Models for Insurance Company in Korea

  • Cho, Mee-Hye;Park, Eun-Sik
    • Journal of the Korean Data and Information Science Society
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    • 제19권4호
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    • pp.1007-1018
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    • 2008
  • The purpose of this case study is to demonstrate database-marketing management. First, we explore original variables for insurance customer's data, modify them if necessary, and go through variable selection process before analysis. Then, we develop churn prediction models using logistic regression, neural network and SVM analysis. We also compare these three data mining models in terms of misclassification rate.

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SARIMA와 ARDL모형을 활용한 COVID-19 구간별 원/달러 환율 예측 (Prediction of KRW/USD exchange rate during the Covid-19 pandemic using SARIMA and ARDL models)

  • 오인정;김우주
    • 지능정보연구
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    • 제28권4호
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    • pp.191-209
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    • 2022
  • 2020년 코로나19 발발 이후 한국 경제를 포함한 국제 시장 환경은 급속하게 변하고 있고 한국 금융시장의 중요 경제 지표인 원/달러 환율도 요동치고 있다. 대외 의존도가 높은 한국 경제에서 환율에 대한 이해는 항상 중요한 연구 과제였고, 특히 코로나 확산이 환율에 미치는 연구는 시기적으로 많은 경제 학자들의 관심사이기도 하다. 따라서 본 연구는 코로나19 발발 이후 환율과 경제 지표의 관계를 분석하고 환율 예측을 위한 단변량 다변량 예측 모형을 구축하여 모형의 예측 성능을 비교 검증을 하였다. 코로나 전후 기간을 세 기간으로 나눠서 기간 1은 코로나 발발전과 초기, 기간 2는 코로나 대확산, 기간 3을 코로나 안정기로 나누고 기간 1의 환율 데이터를 학습한 SARIMA 모형과 같은 기간의 경제 변수와 환율 데이터를 학습한 ARDL 모형의 예측 성능을 비교하였다. 기간별 RMSE기준으로 SARIMA 모형은 기간 2에서 예측 성능이 뛰어나고 ARDL 모형은 기간 3에서 예측 성능이 가장 우수한 것으로 나타났다. 연구 결론은 환율과 경제 변수의 통상적인 관계가 나타나는 기간 3에서는 변수 관계를 반영하는 ARDL 모형이 좀 더 예측 성능이 좋은 모델이고 기존의 전형적인 환율과 경제 변수의 패턴에서 벗어난 과도기 시기인 기간 2에는 과거 환율 추이만 반영하는 SARIMA 모형이 좀 더 우수한 예측 성능을 보여주는 모델로 검증되었다.

미국 금리 스프레드를 이용한 한국 금리 스프레드 예측 모델에 관한 연구 : SVR-앙상블(RNN, LSTM, GRU) 모델 기반 (A Study on the Korean Interest Rate Spread Prediction Model Using the US Interest Rate Spread : SVR-Ensemble (RNN, LSTM, GRU) Model based)

  • 정순호;김영후;송명진;정윤재;고성석
    • 산업경영시스템학회지
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    • 제43권3호
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    • pp.1-9
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    • 2020
  • Interest rate spreads indicate the conditions of the economy and serve as an indicator of the recession. The purpose of this study is to predict Korea's interest rate spreads using US data with long-term continuity. To this end, 27 US economic data were used, and the entire data was reduced to 5 dimensions through principal component analysis to build a dataset necessary for prediction. In the prediction model of this study, three RNN models (BasicRNN, LSTM, and GRU) predict the US interest rate spread and use the predicted results in the SVR ensemble model to predict the Korean interest rate spread. The SVR ensemble model predicted Korea's interest rate spread as RMSE 0.0658, which showed more accurate predictive power than the general ensemble model predicted as RMSE 0.0905, and showed excellent performance in terms of tendency to respond to fluctuations. In addition, improved prediction performance was confirmed through period division according to policy changes. This study presented a new way to predict interest rates and yielded better results. We predict that if you use refined data that represents the global economic situation through follow-up studies, you will be able to show higher interest rate predictions and predict economic conditions in Korea as well as other countries.

Default Prediction for Real Estate Companies with Imbalanced Dataset

  • Dong, Yuan-Xiang;Xiao, Zhi;Xiao, Xue
    • Journal of Information Processing Systems
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    • 제10권2호
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    • pp.314-333
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    • 2014
  • When analyzing default predictions in real estate companies, the number of non-defaulted cases always greatly exceeds the defaulted ones, which creates the two-class imbalance problem. This lowers the ability of prediction models to distinguish the default sample. In order to avoid this sample selection bias and to improve the prediction model, this paper applies a minority sample generation approach to create new minority samples. The logistic regression, support vector machine (SVM) classification, and neural network (NN) classification use an imbalanced dataset. They were used as benchmarks with a single prediction model that used a balanced dataset corrected by the minority samples generation approach. Instead of using prediction-oriented tests and the overall accuracy, the true positive rate (TPR), the true negative rate (TNR), G-mean, and F-score are used to measure the performance of default prediction models for imbalanced dataset. In this paper, we describe an empirical experiment that used a sampling of 14 default and 315 non-default listed real estate companies in China and report that most results using single prediction models with a balanced dataset generated better results than an imbalanced dataset.

Computer용 Monitor에 대한 신뢰성 예측.확인 방법의 응용 (A Study on A, pp.ication of Reliability Prediction & Demonstration Methods for Computer Monitor)

  • 박종만;정수일;김재주
    • 품질경영학회지
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    • 제25권3호
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    • pp.96-107
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    • 1997
  • The recent stream to reliability prediction is that it is totally inclusive in depth to consider even the operating and environmental condition at the level of finished goods as well as component itselves. In this study, firstly we present the reliability prediction methods by entire failure rate model which failure rate at the system level is added to the failure rate model at the component level. Secondly we build up the improved bases of reliability demonstration through a, pp.ication of Kaplan-Meier, Cumulative hazard, Johnson's methods as non-parametric and Maximum Likelihood Estimator under exponential & Weibull distribution as parametric. And also present the methods of curve fitting to piecewise failure rate under Weibull distribution, PRST (Probability Ratio Sequential Test), curve fitting to S-shaped reliability growth curve, computer programs of each methods. Lastly we show the practical for determination of optimal burn-in time as a method of reliability enhancement, and also verify the practical usefulness of the above study through the a, pp.ication of failure and test data during 1 year.

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일본 동상성판정기준을 적용한 시료의 동상예측 및 동상성 평가 (Evaluation of Frost Heave Prediction and Frost Susceptibility in Sample using JGS Test Method)

  • 김영진;홍승서
    • 한국지반공학회:학술대회논문집
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    • 한국지반공학회 2008년도 춘계 학술발표회 초청강연 및 논문집
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    • pp.926-931
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    • 2008
  • This paper show two different standardized test methods(Japanese Geotechnical Society; JGS 2003). One test is a "Test Method for Frost Heave Prediction Test, JGS 0171-2003", and the other test is a "Test Method for Frost Susceptibility, JGS 0172-2003". The purpose of this test is to obtain the freezing rate(freezing speed), frost heave ratio(heave to sample height), frost heave rate(heaving speed), and other parameters to be used for frost heave prediction and determine the frost susceptibility by freezing test with water intake. This method shall be used to predict the frost heave in frozen ground and evaluate the frost susceptibility of natural and replacement materials.

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The prediction of interest rate using artificial neural network models

  • Hong, Taeho;Han, Ingoo
    • 한국경영과학회:학술대회논문집
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    • 대한산업공학회/한국경영과학회 1996년도 춘계공동학술대회논문집; 공군사관학교, 청주; 26-27 Apr. 1996
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    • pp.741-744
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    • 1996
  • Artifical Neural Network(ANN) models were used for forecasting interest rate as a new methodology, which has proven itself successful in financial domain. This research intended to construct ANN models which can maximize the performance of prediction, regarding Corporate Bond Yield (CBY) as interest rate. Synergistic Market Analysis (SMA) was applied to the construction of models [Freedman et al.]. In this aspect, while the models which consist of only time series data for corporate bond yield were devloped, the other models generated through conjunction and reorganization of fundamental variables and market variables were developed. Every model was constructed to predict 1,6, and 12 months after and we obtained 9 ANN models for interest rate forecasting. Multi-layer perceptron networks using backpropagation algorithm showed good performance in the prediction for 1 and 6 months after.

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화학공장의 악취배출량으로부터 간이 악취 영향도 예측 사례 (Simple Prediction of Odor Affection by Odor Emission Rate from a Chemical Plant)

  • 유미선;양성봉;이오근
    • 한국환경과학회지
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    • 제11권4호
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    • pp.383-389
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    • 2002
  • Odor sources of a chemical plant in Ulsan were surveyed and temperatures, humidities and flow rates of each exhaust gas were measured. The air samples collected from each source were transferred to the laboratory for sensory test and their odor concentrations were investigated. The odor emission rate of each source was estimated from the recorded results and assigned the sources expected to be needed for the odor prevention policy using the simple prediction equation of the affection by malodor to the nearest residential area. From the total odor emission rate of the examined plant and the relation table for expectable affection area it was concluded that total odor emission of this plant might be decreased for the prevention of residential complaint.

Multi-zone 모델에 의한 디젤엔진에서의 분사율 변화에 따른 배기가스 특성에 관한 연구 (A Study on the Effect of Injection Rate on Emission Characteristics in D.I. Diesel Engine by Multi-zone Model)

  • 황재원;갈한주;박재근;김만호;;채재우
    • 한국자동차공학회논문집
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    • 제7권7호
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    • pp.94-103
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    • 1999
  • A model for the prediction of combustion and exhaust emissions of DI diesel engine has been formulated and developed . This model is a quasi-dimensional phenomenological one and is based on multi-zone combustion modelling concept. It takes into consideration, on a zonal basis ,detailed of fuel spray formation, droplet evaporation, air-fuel mixing, spray wall interaction, swirl , heat transfer, self ignition and burning rate . The emission model is considered with chemical equipment , as well as the kinetics of fuel. NO and soot reactions in order to calculate the pollutant concentrations within each zone and the whole of cylinder . The accuracy of prediction versus experimental data and the capability of the model in predicting engine heat release, cylinder pressure and all the major exhaust emissions on zonal and cumulative basis., is demonstrated. Detailed prediction results showing the sensitivity of the model bv various injection rates are presented and discussed.

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포트폴리오 최적화와 주가예측을 이용한 투자 모형 (Stock Trading Model using Portfolio Optimization and Forecasting Stock Price Movement)

  • 박강희;신현정
    • 대한산업공학회지
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    • 제39권6호
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    • pp.535-545
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    • 2013
  • The goal of stock investment is earning high rate or return with stability. To accomplish this goal, using a portfolio that distributes stocks with high rate of return with less variability and a stock price prediction model with high accuracy is required. In this paper, three methods are suggested to require these conditions. First of all, in portfolio re-balance part, Max-Return and Min-Risk (MRMR) model is suggested to earn the largest rate of return with stability. Secondly, Entering/Leaving Rule (E/L) is suggested to upgrade portfolio when particular stock's rate of return is low. Finally, to use outstanding stock price prediction model, a model based on Semi-Supervised Learning (SSL) which was suggested in last research was applied. The suggested methods were validated and applied on stocks which are listed in KOSPI200 from January 2007 to August 2008.