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Encyclopedia > Autoregressive integrated moving average

In statistics, an autoregressive integrated moving average (ARIMA) model is a generalisation of an autoregressive moving average or (ARMA) model. These models are fitted to time series data either in order to better understand the data or to predict future points in the series. The model is generally referred to as an ARIMA(p,d,q) model where the p, d and q are integers greater than or equal to zero and refer to the order of the autoregressive, integrated and moving average parts of the model respectively. Statistics is a type of data analysis whose practice includes the planning, summarizing, and interpreting of observations of a system possibly followed by predicting or forecasting of future events based on a mathematical model of the system being observed. ... In statistics, autoregressive moving average (ARMA) models are typically applied to time series data. ... In statistics and signal processing, a time series is a sequence of data points, measured typically at successive times, spaced apart at uniform time intervals. ...


Given a time series of data Xt (where t is integer valued and the Xt are real numbers) then an ARMA(p,q) model is given by

where L is the lag operator, the φi are the parameters of the autoregressive part of the model, the θi are the parameters of the moving average part and the εt are error terms. The error terms εt are generally assumed to be iid variables sampled from a normal distribution with zero mean: εt ~ N(0,σ2) where σ2 is the variance. In time series analysis, the lag operator or backshift operator operates on an element of a time series to produce the previous element. ... In probability theory, a sequence or other collection of random variables is independent and identically distributed (i. ... The normal distribution, also called Gaussian distribution, is an extremely important probability distribution in many fields, especially in physics and engineering. ...


The ARMA model is generalised by adding a d parameter to form the ARIMA (p, d, q) model

where d is a positive integer (if d is zero then this model is equivalent to an ARMA model). It should be noted that not all choices of parameters produce well-behaved models. In particular, if the model is required to be stationary then conditions on these parameters must be met. In the mathematical sciences, a stationary process is a stochastic process in which the probability density function of some random variable X does not change over time or position. ...


Some well-known special cases arise naturally. For example, an ARIMA(0,1,0) model is given by:

which is simply a random walk. In mathematics and physics, a random walk is a formalization of the intuitive idea of taking successive steps, each in a random direction. ...


A number of variations on the ARIMA model are commonly used. For example, if multiple time series are used then the Xt can be thought of as vectors and a VARIMA model may be appropriate. Sometimes a seasonal effect is suspected in the model. For example, consider a model of daily road traffic volumes. Weekends clearly exhibit different behaviour from weekdays. In this case it is often considered better to use a SARIMA (seasonal ARIMA) model than to increase the order of the AR or MA parts of the model. If the time-series is suspected to exhibit long-range dependence then the d parameter may be replaced by certain non-integer values in a Fractional ARIMA (FARIMA also sometimes called ARFIMA) modal. A self-similar phenomenon behaves the same when viewed at different degrees of magnification, or different scales on a dimension (space or time). ...


External links

  • The US Census Bureau uses ARIMA for "seasonally adjusted" data (programs, docs, and papers here)

  Results from FactBites:
 
Autoregressive moving average model - Wikipedia, the free encyclopedia (846 words)
An autoregressive model is essentially an infinite impulse response filter with some additional interpretation placed on it.
The moving average model is essentially a finite impulse response filter with some additional interpretation placed on it.
Autoregressive moving average models can be generalized in other ways.
AUTOREGRESSIVE INTEGRATED MOVING AVERAGE MODELS (ARIMA) (1127 words)
Moving average parameters relate what happens in period t only to the random errors that occurred in past time periods, i.e.
A moving average model with one MA term may be written as follows...
As in the case of autoregressive models, the moving average models can be extended to higher order structures covering different combinations and moving average lengths.
  More results at FactBites »


 

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