نتایج جستجو برای: آریما arima

تعداد نتایج: 3377  

ژورنال: :مدیریت دارایی و تأمین مالی 0
میثم محمودی آذر دانشگاه تهران رضا راعی دانشگاه تهران

موضوع شناخت و بررسی رفتار قیمت سهام، همواره یکی از موضوع های مهم و مورد توجه محافل علمی و سرمایه گذاری بوده است. اخیراً تعداد زیادی از پژوهشگران در پژوهش های خود بازار سهام را به عنوان یک سیستم پویای غیرخطی در نظر گرفته اند. در این پژوهش، تلاش شده است با استفاده از تبدیل موجک و شبکه عصبی مدلی ارایه شود که پیش بینی دقیق تر و با خطای کمتری از بازده شاخص بورس اوراق بهادار داشته باشد. در این مدل ترک...

Journal: :journal of biostatistics and epidemiology 0
mohammad moqaddasi-amiri research center for modeling and health, institute for futures studies in health, department of epidemiology and biostatistics, school of public health, kerman university of medical sciences, kerman, iran abbas bahrampour research center for modeling and health, institute for futures studies in health, department of epidemiology and biostatistics, school of public health, kerman university of medical sciences, kerman, iran

b a c k g r o u n d & aim: one of the common used models in time series is auto regressive integrated moving  average  (arima)  model.  arima  will  do  modeling  only  linearly.  artificial  neural networks (ann) are modern methods that be used for time series forecasting.  these models can identify non-linear relationships  among data. the breast cancer has the most mortality of cancers among...

2004
Regina Kaiser Agustín Maravall Jorge Carrillo

Filters used to estimate unobserved components in time series are often designed on a priori grounds, so as to capture the frequencies associated with the component. A limitation of these filters is that they may yield spurious results. The danger can be avoided if the so-called ARIMA-model-based (AMB) procedure is used to derive the filter. However, parsimony of ARIMA models typically implies ...

2006
Ramesh Chand

Climate and rainfall are highly non-linear and complicated phenomena, which require sophisticated computer modelling and simulation for accurate prediction. An artificial intelligence technology allows knowledge processing and can be used .as forecasting tool. For example, the application of Artificial Neural Networks (ANN), to predict the behaviors of nonlinear systems has become an attractive...

2015
Tao Wang Jie Liu Yunping Zhou Feng Cui Zhenshui Huang Ling Wang Shenyong Zhai

BACKGROUND Hemorrhagic fever with renal syndrome (HFRS) is highly endemic in mainland China, where human cases account for 90 % of the total global cases. Yiyuan County is one of the most serious affected areas in China. Therefore, there is an urgent need for monitoring and predicting HFRS incidence in Yiyuan to make the control of HFRS more effective. METHODS The study was based on the repor...

Journal: :Academic emergency medicine : official journal of the Society for Academic Emergency Medicine 2009
Lisa M Schweigler Jeffrey S Desmond Melissa L McCarthy Kyle J Bukowski Edward L Ionides John G Younger

OBJECTIVES The authors investigated whether models using time series methods can generate accurate short-term forecasts of emergency department (ED) bed occupancy, using traditional historical averages models as comparison. METHODS From July 2005 through June 2006, retrospective hourly ED bed occupancy values were collected from three tertiary care hospitals. Three models of ED bed occupancy ...

2013
MING-HUNG SHU YING-FANG HUANG

The import and export of goods normally require the involvement of many different sectors from purchasing, manufacturing, transporting, inventory, distribution, etc. In order to have proper plans, accurately forecast the volume of imported-exported goods is the core issue. By comparing the performance of autoregressive integrated moving average (ARIMA) model, Grey model, and their joint Fourier...

Journal: :Bioscience trends 2017
Jie Zhang Kazumitsu Nawata

Worldwide, influenza is estimated to result in approximately 3 to 5 million annual cases of severe illness and approximately 250,000 to 500,000 deaths. We need an accurate time-series model to predict the number of influenza patients. Although time-series models with different time lags as feature spaces could lead to varied accuracy, past studies simply adopted a time lag in their models witho...

Journal: :Geographical Analysis 2010

Journal: :Econometrics Journal 2022

Summary The Rubin Causal Model (RCM) is a framework that allows to define the causal effect of an intervention as contrast potential outcomes. In recent years, several methods have been developed under RCM estimate effects in time series settings. None these makes use autoregressive integrated moving average (ARIMA) models, which are instead very common econometrics literature. this paper, we p...

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