• 제목/요약/키워드: time series forecast

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단변량 시계열모형을 이용한 식음료 수요예측에 관한 연구 - 서울소재 특1급 H호텔 사례를 중심으로 - (Forecasting Demand for Food & Beverage by Using Univariate Time Series Models: - Whit a focus on hotel H in Seoul -)

  • 김석출;최수근
    • 한국조리학회지
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    • 제5권1호
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    • pp.89-101
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    • 1999
  • This study attempts to identify the most accurate quantitative forecasting technique for measuring the future level of demand for food & beverage in super deluxe hotel in Seoul, which will subsequently lead to determining the optimal level of purchasing food & beverage. This study, in detail, examines the food purchasing system of H hotel, reviews three rigorous univariate time series models and identify the most accurate forecasting technique. The monthly data ranging from January 1990 to December 1997 (96 observations) were used for the empirical analysis and the 1998 data were left for the comparison with the ex post forecast results. In order to measure the accuracy, MAPE, MAD and RMSE were used as criteria. In this study, Box-Jenkins model was turned out to be the most accurate technique for forecasting hotel food & beverage demand among selected models generating 3.8% forecast error in average.

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Is it possible to forecast KOSPI direction using deep learning methods?

  • Choi, Songa;Song, Jongwoo
    • Communications for Statistical Applications and Methods
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    • 제28권4호
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    • pp.329-338
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    • 2021
  • Deep learning methods have been developed, used in various fields, and they have shown outstanding performances in many cases. Many studies predicted a daily stock return, a classic example of time-series data, using deep learning methods. We also tried to apply deep learning methods to Korea's stock market data. We used Korea's stock market index (KOSPI) and several individual stocks to forecast daily returns and directions. We compared several deep learning models with other machine learning methods, including random forest and XGBoost. In regression, long short term memory (LSTM) and gated recurrent unit (GRU) models are better than other prediction models. For the classification applications, there is no clear winner. However, even the best deep learning models cannot predict significantly better than the simple base model. We believe that it is challenging to predict daily stock return data even if we use the latest deep learning methods.

Comparison of forecasting performance of time series models for the wholesale price of dried red peppers: focused on ARX and EGARCH

  • Lee, Hyungyoug;Hong, Seungjee;Yeo, Minsu
    • 농업과학연구
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    • 제45권4호
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    • pp.859-870
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    • 2018
  • Dried red peppers are a staple agricultural product used in Korean cuisine and as such, are an important aspect of agricultural producers' income. Correctly forecasting both their supply and demand situations and price is very important in terms of the producers' income and consumer price stability. The primary objective of this study was to compare the performance of time series forecasting models for dried red peppers in Korea. In this study, three models (an autoregressive model with exogenous variables [ARX], AR-exponential generalized autoregressive conditional heteroscedasticity [EGARCH], and ARX-EGARCH) are presented for forecasting the wholesale price of dried red peppers. As a result of the analysis, it was shown that the ARX model and ARX-EGARCH model, each of which adopt both the rolling window and the adding approach and use the agricultural cooperatives price as the exogenous variable, showed a better forecasting performance compared to the autoregressive model (AR)-EGARCH model. Based on the estimation methods and results, there was no significant difference in the accuracy of the estimation between the rolling window and adding approach. In the case of dried red peppers, there is limitation in building the price forecasting models with a market-structured approach. In this regard, estimating a forecasting model using only price data and identifying the forecast performance can be expected to complement the current pricing forecast model which relies on market shipments.

LSTM을 이용한 교통사고 발생 패턴 예측 (Forecasting of Traffic Accident Occurrence Pattern Using LSTM)

  • 노유진;배상훈
    • 한국ITS학회 논문지
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    • 제20권3호
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    • pp.59-73
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    • 2021
  • 교통사고로 인한 많은 인명피해가 발생하고 있으나, 첨단 기술의 발전에도 불구하고 교통사고 발생은 줄어들지 않고 있다. 교통사고를 사전에 예방하기 위해서는 향후 사고가 어떻게 변화하여 갈 것인지를 정확하게 예측할 필요가 있다. 지금까지 교통사고 발생 빈도 예측은 주요 연구 분야가 아니었으며 주로 과거 일정 기간의 통계를 기반으로 전통적인 방법으로 미시적으로 분석되어 왔다. 최근 AI 기술이 교통사고 분야에 도입 되었음에도 불구하고 주로 교통 흐름 예측에 초점을 맞추고 있어, 본 연구에서는 2014년부터 2019년까지 국내에서 발생한 1,339,587건의 교통사고 기록을 시계열 데이터로 변환하고 AI 알고리즘 LSTM을 이용하여 연령별, 시간별 교통사고 발생 빈도를 예측하였다. 또한 코로나-19로 인한 교통 환경의 변화에 맞추어 예측값과 실제값을 비교 검증하였다. 향후 이러한 연구결과가 교통사고 예방의 정책개선으로 이어지고 사고 예방에 활용 될 것으로 기대된다.

전이함수모형을 이용한 국민의료비 예측 (Forecast of health expenditure by transfer function model)

  • 김상아;박웅섭;김용익
    • 보건행정학회지
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    • 제13권3호
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    • pp.91-103
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    • 2003
  • The purpose of this study was to provide basic reference data for stabilization scheme of health expenditure through forecasting of health expenditure. The authors analyzed the health expenditure from 1985 to 2000 that had been calculated by Korean institute for health and social affair using transfer function model as ARIMA model with input series. They used GDP as the input series for more precise forecasting. The model of error term was identified ARIMA(2,2,0) and Portmanteau statics of residuals was not significant. Forecasting health expenditure as percent of GDP at 2010 was 6.8%, under assumption of 5% GDP increase rate. Moreover that was 7.4%, under assumption of 3% GDP increase rate and that was 6.4%, under assumption of 7% GDP increase rate.

ARMA(p, q) 모형에서 멱변환의 재변환에 관한 연구 - 모의실험을 중심으로 (Re-Transformation of Power Transformation for ARMA(p, q) Model - Simulation Study)

  • 강전훈;신기일
    • 응용통계연구
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    • 제28권3호
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    • pp.511-527
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    • 2015
  • ARMA(p, q) 모형 분석에서 분산 안정화 또는 정규화를 위해 멱변환(power transformation)이 사용된다. 변환된 자료를 이용하여 분석이 이루어지며 원 자료의 예측을 위해 재변환이 사용된다. 이때 흔히 변환된 자료 분석에서 얻어진 예측값의 역함수 값이 원자료 예측값으로 사용되지만 이는 편향이 있는 것으로 알려져 있다. 이를 해결하기 위해 로그 변환의 경우 Granger과 Newbold (1976)는 로그-정규분포의 기댓값을 이용할 것을 제안하였다. 본 연구에서는 모의실험을 통하여 제곱근 변환과 로그 변환 후 재변환을 사용할 때 예측값으로 기댓값의 역함수를 이용하는 방법과 역함수의 기댓값을 사용하였을 때의 추정의 결과를 모의실험을 통하여 비교하였다.

Monthly rainfall forecast of Bangladesh using autoregressive integrated moving average method

  • Mahmud, Ishtiak;Bari, Sheikh Hefzul;Rahman, M. Tauhid Ur
    • Environmental Engineering Research
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    • 제22권2호
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    • pp.162-168
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    • 2017
  • Rainfall is one of the most important phenomena of the natural system. In Bangladesh, agriculture largely depends on the intensity and variability of rainfall. Therefore, an early indication of possible rainfall can help to solve several problems related to agriculture, climate change and natural hazards like flood and drought. Rainfall forecasting could play a significant role in the planning and management of water resource systems also. In this study, univariate Seasonal Autoregressive Integrated Moving Average (SARIMA) model was used to forecast monthly rainfall for twelve months lead-time for thirty rainfall stations of Bangladesh. The best SARIMA model was chosen based on the RMSE and normalized BIC criteria. A validation check for each station was performed on residual series. Residuals were found white noise at almost all stations. Besides, lack of fit test and normalized BIC confirms all the models were fitted satisfactorily. The predicted results from the selected models were compared with the observed data to determine prediction precision. We found that selected models predicted monthly rainfall with a reasonable accuracy. Therefore, year-long rainfall can be forecasted using these models.

Outlier Detection Based on Discrete Wavelet Transform with Application to Saudi Stock Market Closed Price Series

  • RASHEDI, Khudhayr A.;ISMAIL, Mohd T.;WADI, S. Al;SERROUKH, Abdeslam
    • The Journal of Asian Finance, Economics and Business
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    • 제7권12호
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    • pp.1-10
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    • 2020
  • This study investigates the problem of outlier detection based on discrete wavelet transform in the context of time series data where the identification and treatment of outliers constitute an important component. An outlier is defined as a data point that deviates so much from the rest of observations within a data sample. In this work we focus on the application of the traditional method suggested by Tukey (1977) for detecting outliers in the closed price series of the Saudi Arabia stock market (Tadawul) between Oct. 2011 and Dec. 2019. The method is applied to the details obtained from the MODWT (Maximal-Overlap Discrete Wavelet Transform) of the original series. The result show that the suggested methodology was successful in detecting all of the outliers in the series. The findings of this study suggest that we can model and forecast the volatility of returns from the reconstructed series without outliers using GARCH models. The estimated GARCH volatility model was compared to other asymmetric GARCH models using standard forecast error metrics. It is found that the performance of the standard GARCH model were as good as that of the gjrGARCH model over the out-of-sample forecasts for returns among other GARCH specifications.

SARIMA 모형을 이용한 태양광 발전량 예보 모형 구축 (Solar Power Generation Forecast Model Using Seasonal ARIMA)

  • 이동현;정아현;김진영;김창기;김현구;이영섭
    • 한국태양에너지학회 논문집
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    • 제39권3호
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    • pp.59-66
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    • 2019
  • New and renewable energy forecasts are key technology to reduce the annual operating cost of new and renewable facilities, and accuracy of forecasts is paramount. In this study, we intend to build a model for the prediction of short-term solar power generation for 1 hour to 3 hours. To this end, this study applied two time series technique, ARIMA model without considering seasonality and SARIMA model with considering seasonality, comparing which technique has better predictive accuracy. Comparing predicted errors by MAE measures of solar power generation for 1 hour to 3 hours at four locations, the solar power forecast model using ARIMA was better in terms of predictive accuracy than the solar power forecast model using SARIMA. On the other hand, a comparison of predicted error by RMSE measures resulted in a solar power forecast model using SARIMA being better in terms of predictive accuracy than a solar power forecast model using ARIMA.

중선형 모형을 이용한 비선형 시계열 패널자료의 동질성검정에 대한 연구 (A Study on the Test of Homogeneity for Nonlinear Time Series Panel Data Using Bilinear Models)

  • 김인규
    • 디지털융복합연구
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    • 제12권7호
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    • pp.261-266
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    • 2014
  • 시계열 모형에서 모수의 수가 많으면 모수추정에 따르는 오차가 커지게 되므로 예측을 하는데 많은 어려움이 있다. 만약 여러개의 시계열 자료들이 동일한 모형에서부터 얻어졌다고 하는 동질성 가설이 채택되면 모수축약을 이룰 수 있고, 더 좋은 예측값을 얻을 수 있다. 비선형 시계열 패널 자료는 각각의 시계열마다 모수들이 있기 때문에 매우 많은 모수가 존재하게되고, 모수의 수가 많으면 모수추정에 따르는 오차가 커지게 되어 예측의 정확도가 떨어지게 된다. 패널내에 존재하는 독립적인 여러 시계열들의 동질성이 만족되면 시계열을 종합하여 모수를 추정하고 검정할 수 있다. m개의 독립적인 비선형 시계열 패널 자료의 동질성 검정을 알아보기 위하여 모형을 설정하고 이 모형에 대한 정상성 조건을 구하였고, 동질성 검정통계량을 유도했으며, 구한 검정 통계량의 극한분포가 ${\chi}^2$ 분포를 따르는 것을 보였다. 실증분석에 있어서는 비선형 시계열 자료중 중선형 시계열 모형의 동질성 검정을 하고, 실제 우리나라 주식자료를 2개의 집단으로 나누어 비선형 시계열 패널 자료의 동질성 검정에 대한 분석을 하였다.