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Prediction and Analysis of O_3 based on the ARIMA Model 被引量:2
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作者 李双金 杨宁 +2 位作者 闫奕琪 曹旭东 冀德刚 《Agricultural Science & Technology》 CAS 2015年第10期2146-2148,共3页
The research conducted prediction on changes of atmosphere pollution during July 9, 2014-July 22, 2014 with SPSS based on monitored data of O3 in 13 successive weeks from 6 sites in Baoding City and demonstrated predi... The research conducted prediction on changes of atmosphere pollution during July 9, 2014-July 22, 2014 with SPSS based on monitored data of O3 in 13 successive weeks from 6 sites in Baoding City and demonstrated prediction effect of ARIMA model is good by Ljung-Box Q-test and R2, and the model can be used for prediction on future atmosphere pollutant changes. 展开更多
关键词 Air quality Analysis of time series SPSS arima model
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The Application of ARIMA Model in Forecasting of PDSI in Henan Province
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作者 厉玉昇 《Agricultural Science & Technology》 CAS 2016年第3期760-764,共5页
[Objective] The aim was to establish drought forecasting model with high precision. [Method] With an ARIMA regression model, the research performed Palmer Drought mode(PDSI) time series modeling analysis of Henan Pr... [Objective] The aim was to establish drought forecasting model with high precision. [Method] With an ARIMA regression model, the research performed Palmer Drought mode(PDSI) time series modeling analysis of Henan Province based on PDSI time series and DPS(Data Processing Software) in order to build drought forecasting model. [Result] It is feasible to perform drought forecasting with appropriate parameters. [Conclusion] ARIMA model is practical and more precise in PDSI-based drought analysis and forecasting. 展开更多
关键词 arima model PDSI Forecasting APPLICATION Henan Province
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Prediction of Civil Aviation Passenger Transportation Based on ARIMA Model 被引量:5
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作者 Xinxin Tang Guangming Deng 《Open Journal of Statistics》 2016年第5期824-834,共12页
The passenger transportation, as an important index to describe the scale of aviation passenger transport, prediction and research, can let us understand the future trend of the aviation passenger transport, according... The passenger transportation, as an important index to describe the scale of aviation passenger transport, prediction and research, can let us understand the future trend of the aviation passenger transport, according to it, the airline can make corresponding marketing strategy adjustment. Combining with the knowledge of time series let us understand the characteristics of passenger transportation change, the R software is used to fit the data, so as to establish the ARIMA(1,1,8) model to describe the civil aviation passenger transport developing trend in the future and to make reasonable predictions. 展开更多
关键词 Passenger Transportation arima model Seasonal Trend FORECAST
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Forecast on Price of Agricultural Futures in China Based on ARIMA Model 被引量:6
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作者 Chunyang WANG 《Asian Agricultural Research》 2016年第11期9-12,16,共5页
The forecast on price of agricultural futures is studied in this paper. We use the ARIMA model to estimate the price trends of agricultural futures,which can help the investors to optimize their investing plans. The s... The forecast on price of agricultural futures is studied in this paper. We use the ARIMA model to estimate the price trends of agricultural futures,which can help the investors to optimize their investing plans. The soybean future contracts are taken as an example to simulate the forecast based on the auto-regression coefficient(p),differential times(d) and moving average coefficient(q). The results show that ARIMA model is better to simulate and forecast the trend of closing prices of soybean futures contract,and it is applicable to forecasting the price of agricultural futures. 展开更多
关键词 Price of agricultural futures arima model Short-term forecast of price
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Forecasting Tesla’s Stock Price Using the ARIMA Model 被引量:1
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作者 Qiangwei Weng Ruohan Liu Zheng Tao 《Proceedings of Business and Economic Studies》 2022年第5期38-45,共8页
The stock market is an important economic information center.The economic benefits generated by stock price prediction have attracted much attention.Although the stock market cannot be predicted accurately,the stock m... The stock market is an important economic information center.The economic benefits generated by stock price prediction have attracted much attention.Although the stock market cannot be predicted accurately,the stock market’s prediction of the trend of stock prices helps in grasping the operation law of the stock market and the influence mechanism on the economy.The autoregressive integrated moving average(ARIMA)model is one of the most widely accepted and used time series forecasting models.Therefore,this paper first compares the return on investment(ROI)of Apple and Tesla,revealing that the ROI of Tesla is much greater than that of Apple,and subsequently focuses on ARIMA model’s prediction on the available time series data,thus concluding that the ARIMA model is better than the Naïve method in predicting the change in Tesla’s stock price trend. 展开更多
关键词 Stock price forecast arima model Naïve method TESLA
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Estimation of Number Of Small Cattle Through ARIMA Models in Turkey
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作者 Senol CELIK 《Journal of Mathematics and System Science》 2015年第11期464-473,共10页
In this study, the number of sheep and goats in Turkey were analysed by time series analysis method, and the number of great cattle for next years predicted through the most appropriate time series model.Time series w... In this study, the number of sheep and goats in Turkey were analysed by time series analysis method, and the number of great cattle for next years predicted through the most appropriate time series model.Time series was formed using the data on the number of sheep and goats belonging to the period between 1930 and 2014 in Turkey It was determined through autocorrelation function graphic that the series weren't stationary at first, but they became stationary after their first difference were calculated. A stagnancy test was performed through extended Dickey-Fuller test. So as to determine the suitability of the model, it was reviewed if autocorrelation and partial autocorrelation graphs were white noise series and also the results of Box-Ljung test were reviwed. Through the "tested models, the model estimations, of which parameter estimates were significant and Akaike information criterion (AIC) was the smallest, were performed. The most appropriate model in terms of both the number of sheep and goats is first-level integrated moving average model stated as ARIMA(0,1,1). In this model, it was estimated that there would be an increase in the number of sheep and goats in Turkey between the years of 2015 and 2020, however, the increase in the number of sheep would be more than the increase in the number of goats. 展开更多
关键词 arima models AUTOCORRELATION the number of sheep the number of goats.
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Prediction and Analysis of Chinese Rural Households' Consumption Level Based on the ARIMA Model 被引量:2
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作者 YAN Jian-biao,LI Qiang College of Economics & Management,Beijing Forestry University,Beijing 100083,China 《Asian Agricultural Research》 2011年第3期83-85,88,共4页
By using the software SAS9.2 and the relevant data of consumption level of rural residents in China from 1952 to 2008,the ARIMA model is established.The model is used to analyze and forecast the time series of the con... By using the software SAS9.2 and the relevant data of consumption level of rural residents in China from 1952 to 2008,the ARIMA model is established.The model is used to analyze and forecast the time series of the consumption level of Chinese rural residents.The results show that in the near future,the consumption level of Chinese rural residents will be further raised.In 2012,the level will break through per capita 5 000 yuan,almost 100 times more than that in the primary time period.But consumption level does not equal to living standard.To let farmers lead a good life,the government should follow the objective laws;take the overall situation into consideration;coordinate the relations among farmers' consumption level,national subsidies and farmers' production enthusiasm.Therefore,The paper suggests that the historical and objective factors should be attached more importance to.Besides,raising farmers' income and allaying farmers' fear were effective measures in developing the consumptive potential of rural market and promoting the economic sustainable development. 展开更多
关键词 arima model RURAL households CONSUMPTION ECONOMIC
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Analysis and Forecast of MSW Production Based on the ARIMA Model in Beijing 被引量:1
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作者 Wang Guiqin Zhang Hongyu Dai Zhifeng 《Meteorological and Environmental Research》 CAS 2017年第6期32-35,40,共5页
Based on the data of MSW generation in Beijing from 2004 to 2012,an ARIMA model of time series analysis was established. By contrast of the modeling results of different yearly data,the forecast period was identified ... Based on the data of MSW generation in Beijing from 2004 to 2012,an ARIMA model of time series analysis was established. By contrast of the modeling results of different yearly data,the forecast period was identified to be 10 years. The yearly production of MSW from 2015 to 2025 was forecasted by using SPSS 16. 0 software. Result shows that the forecasting effect of ARIMA( 1,0,1) model is relatively good,and it can be applied to prediction of MSW production in Beijing. In the next 10 years,the amount of MSW produced in Beijing is increasing,but the growth rate is not large. Is expected to 2025,the production of MSW will reach more than 9 million tons. Taking into account the MSW return,it is inferred that the production of MSW in Beijing in 2025 will be close to 10 million tons. In order to reduce the pressure of subsequent waste disposal facilities in Beijing,the government can increase the intensity of the recycling of waste materials. 展开更多
关键词 MSW arima model PRODUCTION FORECAST Time SERIES analysis
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Forecasting Measles Immunization Coverage Using ARIMA Model 被引量:1
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作者 Rachel T. Alegado Gilbert M. Tumibay 《Journal of Computer and Communications》 2019年第10期157-168,共12页
This study aimed to find a model to forecast monthly measles immunization coverage using Autoregressive Integrated Moving Average (ARIMA). The monthly registered data for measles immunization coverage from January 201... This study aimed to find a model to forecast monthly measles immunization coverage using Autoregressive Integrated Moving Average (ARIMA). The monthly registered data for measles immunization coverage from January 2014 to December 2018 were used for the development of the model. The best model with the smallest Normalized Bayesian Information Criterion (BIC) of 8.673 is ARIMA (0, 1, 0). ARIMA (0, 1, 0) was used to forecast the monthly measles immunization coverage for the next 36 months from January 2018 to December 2020. The results obtained prove that this model can be used for forecasting future immunization coverage and will help decision-makers to establish strategies, priorities, and proper use of immunization resources. 展开更多
关键词 Forecasting MEASLES IMMUNIZATION COVERAGE arima modelING
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ARIMA MODEL ON WOOD PROPERTIES VARIATION PATTERN OF KOREAN LARCH
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作者 王金满 郭明辉 徐平武 《Journal of Northeast Forestry University》 SCIE CAS CSCD 1996年第4期57-60,共4页
In this paper, according to the theory and method of time-series analysis, the grow ing rings ARIMA model of wood properties variation pattern for Larix olgensis plantation was studied. The model recognition and param... In this paper, according to the theory and method of time-series analysis, the grow ing rings ARIMA model of wood properties variation pattern for Larix olgensis plantation was studied. The model recognition and parameter estimation were discused. The ARIMA model of wood growth ring density, growth ring widith and late wood percentage was obtained. Appling the ARIMA model which obtained from actual test fitted the variation pattem of wood growth ring for Larix olgensis. The result indicated it was an effective method that applied the ARIMA model to study wood growth ring properties variation pattem. By comparing with the actual variation pattem from test data the goodness of fit was good. 展开更多
关键词 LARIX olgensis PLANTATION VARIATION PATTERN Wood properties arima model
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基于机器学习优化的ARIMA模型对进口食品不合格情况预测
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作者 徐君 赵思明 熊善柏 《粮食与饲料工业》 2025年第1期32-36,共5页
进口食品安全风险是一个动态、非线性的过程,单一的模型很难做出准确拟合和预测。以2010-01—2021-08间的进口食品不合格情况数据为研究对象,采用自动回归差分整合滑动平均模型(ARIMA)进行建模,运用机器学习方法中的支持向量机(SVM)算... 进口食品安全风险是一个动态、非线性的过程,单一的模型很难做出准确拟合和预测。以2010-01—2021-08间的进口食品不合格情况数据为研究对象,采用自动回归差分整合滑动平均模型(ARIMA)进行建模,运用机器学习方法中的支持向量机(SVM)算法对模型进行优化,建立ARIMA-SVM组合模型。以平均绝对误差(MAE)、均方根误差(RMSE)、平均绝对百分率误差(MAPE)和判定系数(R~2)等评价指标作为模型的评价指标。结果发现:ARIMA-SVM组合模型比单独运用ARIMA模型和SVM模型建立的模型的精度高,对进口食品不合格情况的短期预测效果更好。 展开更多
关键词 进口食品 食品安全 arima-SVM模型 机器学习
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基于集成学习的ARIMA-LSTM模型在棉粕价格预测中的应用
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作者 吴展 王春晓 《饲料研究》 北大核心 2025年第2期227-231,共5页
准确预测棉粕价格对于稳定畜产品供给、促进饲料加工业可持续发展以及保障国家粮食安全至关重要。研究旨在基于长短期记忆神经网络(LSTM)的深度学习机制,构建棉粕价格预测模型。首先利用差分自回归移动平均(ARIMA)模型预测时间序列数据... 准确预测棉粕价格对于稳定畜产品供给、促进饲料加工业可持续发展以及保障国家粮食安全至关重要。研究旨在基于长短期记忆神经网络(LSTM)的深度学习机制,构建棉粕价格预测模型。首先利用差分自回归移动平均(ARIMA)模型预测时间序列数据中线性变化,并应用LSTM算法估计棉粕价格序列的非线性效应。运用集成学习极限梯度提升(XGBoost)算法来确定残差序列滞后长度作为LSTM模型中的输入节点。最后,将拟合的线性和非线性变化之和作为ARIMA-LSTM组合模型的最终预测值。研究表明,基于XGBoost的ARIMA-LSTM混合模型优于单一的ARIMA时间序列预测模型,具有良好的预测性能。 展开更多
关键词 深度学习 棉粕价格预测 集成学习 arima模型 XGBoost算法
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基于ARIMA模型与GM(1,1)模型比较的宁夏卫生总费用及其构成预测研究
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作者 周燕 许静怡 《中国医疗管理科学》 2025年第1期57-63,共7页
目的比较ARIMA模型和GM(1,1)模型对宁夏卫生费用的拟合效果,并预测宁夏卫生总费用及其构成的未来发展趋势,为相关部门制定和调整医疗卫生政策提供参考。方法利用2016年—2022年宁夏卫生总费用及其构成的相关数据,分别构建ARIMA模型和GM(... 目的比较ARIMA模型和GM(1,1)模型对宁夏卫生费用的拟合效果,并预测宁夏卫生总费用及其构成的未来发展趋势,为相关部门制定和调整医疗卫生政策提供参考。方法利用2016年—2022年宁夏卫生总费用及其构成的相关数据,分别构建ARIMA模型和GM(1,1)模型,进行卫生总费用构成的拟合,采用平均绝对误差(Mean Absolute Error,MAE)和均方根误差(Root Mean Square Error,RMSE)比较拟合效果,基于优势模型对宁夏2023年—2028年卫生总费用及其构成进行预测。结果GM(1,1)模型拟合效果较好,为优势模型。预测结果显示,2023年—2028年,宁夏卫生总费用平稳增长,从465.38亿元增长至671.50亿元,政府和个人卫生支出占卫生总费用的比重分别从32.35%和25.39%下降至31.63%和22.53%,社会卫生支出占卫生总费用的比重从42.25%上升至45.84%。结论经预测,2023年—2028年宁夏卫生总费用呈逐年增长趋势,卫生费用筹资结构趋于合理化,相关部门应继续保持目前发展态势,采取有效措施以促进医疗卫生事业的可持续发展。 展开更多
关键词 arima模型 GM(1 1)模型 卫生总费用 预测研究
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结合ARIMA方法与GMS模拟洋河流域地下水水位
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作者 孙福宝 童菊秀 +1 位作者 梁畅 仝锦威 《水资源与水工程学报》 北大核心 2025年第1期18-28,共11页
传统地下水数值模型在预测未来地下水水位时,常受限于难以获取的降水与蒸发数据。为解决这一问题,基于ARIMA模型预测降水与蒸发时间序列数据,并结合GMS地下水流模型,模拟洋河流域地下水水位变化过程,提出一种改进的地下水水位预测方法... 传统地下水数值模型在预测未来地下水水位时,常受限于难以获取的降水与蒸发数据。为解决这一问题,基于ARIMA模型预测降水与蒸发时间序列数据,并结合GMS地下水流模型,模拟洋河流域地下水水位变化过程,提出一种改进的地下水水位预测方法。通过分析洋河流域2000—2020年的历史气象数据,使用ARIMA模型预测2021年的降水与蒸发量,将预测结果输入GMS模型,开展地下水水位模拟实验。结果表明:GMS模型对洋河流域地下水水位的模拟效果较好,大多数NSE值分布在0.71~0.96之间,RMSE值均在0.05~0.45 m之间,整体精度较高;ARIMA模型对气象数据的预测精度较高,蒸发数据的预测效果优于降水;结合ARIMA模型与GMS模型的研究方法在精度和适用性上表现良好,为区域地下水资源管理提供了科学依据。研究提出的方法克服了传统模型对未来数据依赖性强的局限性,可为类似区域预测地下水水位提供参考。 展开更多
关键词 地下水水位 降水与蒸发数据 时间序列分析arima方法 GMS 洋河流域
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利用CEEMDAN-ARIMA-BiLSTM模型预报电离层总电子含量
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作者 沈豫 管辉 +1 位作者 王杰 孙晨辉 《地理空间信息》 2025年第3期92-95,105,共5页
为了提升电离层总电子含量(TEC)的预报精度,在现有预报模型的基础上提出了一种新的组合预报模型。首先采用自适应噪声完备集合经验模态分解(CEEMDAN)方法分解TEC序列,并进行排列与重组;再分别利用差分自回归移动平均模型(ARIMA)和双向... 为了提升电离层总电子含量(TEC)的预报精度,在现有预报模型的基础上提出了一种新的组合预报模型。首先采用自适应噪声完备集合经验模态分解(CEEMDAN)方法分解TEC序列,并进行排列与重组;再分别利用差分自回归移动平均模型(ARIMA)和双向长短期记忆网络(BiLSTM)对高、低频分量进行建模与预报;最后重构不同分量预报结果,得到最终预报值。根据地磁活动情况,分别选取磁平静期和磁暴期的低、高纬度地区电离层TEC序列进行实验,结果表明该模型在磁平静期预报结果的均方根误差为0.61 TECu,比单一BiLSTM、ARIMA模型分别减少了0.11 TECu、0.05 TECu;磁暴期的均方根误差为0.87 TECu,比单一BiLSTM、ARIMA模型分别减少了0.32 TECu、0.18 TECu,验证了该模型的稳定性与优越性。 展开更多
关键词 电离层 TEC预报 CEEMDAN方法 排列熵 arima模型 BiLSTM模型
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ARIMA时序模型在广东省经济动态分析中的创新探索
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作者 吕浩 吕志 《特区经济》 2025年第3期119-122,共4页
本文以1982—2022年《广东统计年鉴》中的GDP数据为基础,构建ARIMA模型进行拟合分析。首先,分别对GDP数据做平稳化处理;其次,对平稳化之后的数据建立模型,并对模型中的参数进行估计;最后,利用建立的模型对广东省未来五年的GDP做出预测... 本文以1982—2022年《广东统计年鉴》中的GDP数据为基础,构建ARIMA模型进行拟合分析。首先,分别对GDP数据做平稳化处理;其次,对平稳化之后的数据建立模型,并对模型中的参数进行估计;最后,利用建立的模型对广东省未来五年的GDP做出预测分析。 展开更多
关键词 时间序列分析 arima模型 经济动态分析
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基于ARIMA乘积季节模型的襄阳市公交客流量分析
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作者 王思悦 梁霄 《计算机应用文摘》 2025年第1期190-192,共3页
文章对襄阳市的公交客流量分析问题进行了研究,通过数据挖掘进行建模,旨在实现多维度的客流规律分析。其中,首先以襄阳市“名人城市酒店”公交站点为客流量调查数据源,通过数据预处理来确保襄阳市公交客流量数据的质量和适用性,以此为... 文章对襄阳市的公交客流量分析问题进行了研究,通过数据挖掘进行建模,旨在实现多维度的客流规律分析。其中,首先以襄阳市“名人城市酒店”公交站点为客流量调查数据源,通过数据预处理来确保襄阳市公交客流量数据的质量和适用性,以此为基础来建立时间序列模型;其次从线网枢纽站客流变化规律出发,借助ARIMA乘积季节模型进行平稳性处理、识别、诊断和检验,从而获取较为准确的客流预测结果。 展开更多
关键词 客流规律 arima乘积季节模型 客流量管理
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Time Series Forecasting in Healthcare: A Comparative Study of Statistical Models and Neural Networks
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作者 Ghadah Alsheheri 《Journal of Applied Mathematics and Physics》 2025年第2期633-663,共31页
Time series forecasting is essential for generating predictive insights across various domains, including healthcare, finance, and energy. This study focuses on forecasting patient health data by comparing the perform... Time series forecasting is essential for generating predictive insights across various domains, including healthcare, finance, and energy. This study focuses on forecasting patient health data by comparing the performance of traditional linear time series models, namely Autoregressive Integrated Moving Average (ARIMA), Seasonal ARIMA, and Moving Average (MA) against neural network architectures. The primary goal is to evaluate the effectiveness of these models in predicting healthcare outcomes using patient records, specifically the Cancerpatient.xlsx dataset, which tracks variables such as patient age, symptoms, genetic risk factors, and environmental exposures over time. The proposed strategy involves training each model on historical patient data to predict age progression and other related health indicators, with performance evaluated using Mean Squared Error (MSE) and Root Mean Squared Error (RMSE) metrics. Our findings reveal that neural networks consistently outperform ARIMA and SARIMA by capturing non-linear patterns and complex temporal dependencies within the dataset, resulting in lower forecasting errors. This research highlights the potential of neural networks to enhance predictive accuracy in healthcare applications, supporting better resource allocation, patient monitoring, and long-term health outcome predictions. 展开更多
关键词 Time Series Forecasting arima Sarima Neutral Network Predictive modeling MSE
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Forecasting Model Based on Information-Granulated GA-SVR and ARIMA for Producer Price Index 被引量:1
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作者 Xiangyan Tang Liang Wang +2 位作者 Jieren Cheng Jing Chen Victor S.Sheng 《Computers, Materials & Continua》 SCIE EI 2019年第2期463-491,共29页
The accuracy of predicting the Producer Price Index(PPI)plays an indispensable role in government economic work.However,it is difficult to forecast the PPI.In our research,we first propose an unprecedented hybrid mode... The accuracy of predicting the Producer Price Index(PPI)plays an indispensable role in government economic work.However,it is difficult to forecast the PPI.In our research,we first propose an unprecedented hybrid model based on fuzzy information granulation that integrates the GA-SVR and ARIMA(Autoregressive Integrated Moving Average Model)models.The fuzzy-information-granulation-based GA-SVR-ARIMA hybrid model is intended to deal with the problem of imprecision in PPI estimation.The proposed model adopts the fuzzy information-granulation algorithm to pre-classification-process monthly training samples of the PPI,and produced three different sequences of fuzzy information granules,whose Support Vector Regression(SVR)machine forecast models were separately established for their Genetic Algorithm(GA)optimization parameters.Finally,the residual errors of the GA-SVR model were rectified through ARIMA modeling,and the PPI estimate was reached.Research shows that the PPI value predicted by this hybrid model is more accurate than that predicted by other models,including ARIMA,GRNN,and GA-SVR,following several comparative experiments.Research also indicates the precision and validation of the PPI prediction of the hybrid model and demonstrates that the model has consistent ability to leverage the forecasting advantage of GA-SVR in non-linear space and of ARIMA in linear space. 展开更多
关键词 Data analysis producer price index fuzzy information granulation arima model support vector model.
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ARIMA and Facebook Prophet Model in Google Stock Price Prediction 被引量:2
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作者 Beijia Jin Shuning Gao Zheng Tao 《Proceedings of Business and Economic Studies》 2022年第5期60-66,共7页
We use the Autoregressive Integrated Moving Average(ARIMA)model and Facebook Prophet model to predict the closing stock price of Google during the COVID-19 pandemic as well as compare the accuracy of these two models... We use the Autoregressive Integrated Moving Average(ARIMA)model and Facebook Prophet model to predict the closing stock price of Google during the COVID-19 pandemic as well as compare the accuracy of these two models’predictions.We first examine the stationary of the dataset and use ARIMA(0,1,1)to make predictions about the stock price during the pandemic,then we train the Prophet model using the stock price before January 1,2021,and predict the stock price after January 1,2021,to present.We also make a comparison of the prediction graphs of the two models.The empirical results show that the ARIMA model has a better performance in predicting Google’s stock price during the pandemic. 展开更多
关键词 arima model Facebook Prophet model Stock price prediction Financial market Time series
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