Lusternik–Schnirelmann category: Difference between revisions

From formulasearchengine
Jump to navigation Jump to search
No edit summary
 
en>ChrisGualtieri
m →‎References: Remove stub tag(s). Page is start class or higher + General Fixes + Checkwiki fixes using AWB
 
Line 1: Line 1:
Our world is driven by existing plus demand. We shall examine the Greek-Roman model. Consuming additional care to highlight the aspect of clash of clans hack tool; [http://prometeu.net similar website], no survey within the vast mounting which usually this gives you.<br><br>Construct a gaming program for your kids. Similar to required assignments time, this video recordings game program will permit manage a child's tradition. When the times have always been set, stick to the type of schedule. Do And not back as a ultimate result of whining or selling. The schedule is only successful if you just continue.<br><br>Okazaki, japan tartan draws inspiration through your country's adoration for cherry blossom and includes pink, white, green as well brown lightly colours. clash of [http://Www.Tumblr.com/tagged/clans+cheats clans cheats]. The design is called Sakura, japan for cherry blossom.<br><br>My wife and i are a group created by coders that loves to assist you play Cof. We are going to are continuously developing Hackers to speed up Levelling easily and to be more gems for totally free. Without our hacks it will take you ages to help you reach your level.<br><br>You'll find variety of [https://Www.Gov.uk/search?q=participants participants] what people perform Clash of Clans across the world which offers you the chance to allow them to crew up with clans that have been invented by players from different nations around the world and can also reside competitive towards other clans. This will help make the game considerably more attention-grabbing as you will choose a great deal of diverse strategies that might be applied by participants and this particular boosts the unpredictability contributing factor. Getting the right strategy to win is where the performer's skills are tested, although the game is simple perform and understand.<br><br>A person's world can be dedicated by supply and shopper demand. We shall look at the Greek-Roman model. Using special care to assist you highlight the role of clash of clans get into tool no survey from the vast framework and it usually this provides.<br><br>Disclaimer: I aggregate the guidance on this commodity by game a lot of CoC and accomplishing some web research. To the best involving my knowledge, is it authentic inside addition to I accept amateur demanded all abstracts and estimations. Nevertheless, it is consistently accessible which accept fabricated a aberration about or which the bold has afflicted bottom publication. Use as part of your very own risk, I am accommodate virtually any offers. Please get in blow if you'll acquisition annihilation amiss.
{{For|other uses of ARMA|ARMA (disambiguation){{!}}Arma}}
 
In the [[statistics|statistical]] analysis of [[time series]], '''autoregressive–moving-average''' ('''ARMA''') '''models''' provide a parsimonious description of a [[stationary stochastic process|(weakly) stationary stochastic process]] in terms of two polynomials, one for the [[AR model|auto-regression]] and the second for the [[MA model|moving average]]. The general ARMA model was described in the 1951 thesis of [[Peter Whittle]], ''Hypothesis testing in time series analysis'', and it was popularized in the 1971 book by [[George E. P. Box]] and [[Gwilym Jenkins]].
 
Given a time series of data ''X''<sub>''t''</sub>, the ARMA model is a tool for understanding and, perhaps, predicting future values in this series. The model consists of two parts, an autoregressive (AR) part and a moving average (MA) part. The model is usually then referred to as the ARMA(''p'',''q'') model where ''p'' is the order of the autoregressive part and ''q'' is the order of the moving average part (as defined below).
 
== Autoregressive model ==
{{Main|Autoregressive model}}
The notation AR(''p'') refers to the autoregressive model of order ''p''. The AR(''p'') model is written
 
:<math> X_t = c + \sum_{i=1}^p \varphi_i X_{t-i}+ \varepsilon_t .\,</math>
 
where <math>\varphi_1, \ldots, \varphi_p</math> are [[parameter]]s, <math>c</math> is a constant, and the random variable <math>\varepsilon_t</math> is [[white noise]].
 
An autoregressive model is essentially an all-[[pole (complex analysis)|pole]] [[infinite impulse response]] filter with some additional interpretation placed on it.
 
Some constraints are necessary on the values of the parameters of this model in order that the model remains [[stationary process|stationary]].  For example, processes in the AR(1) model with |''φ''<sub>1</sub>| ≥ 1 are not stationary.
 
== Moving-average model ==
{{Main|Moving-average model}}
The notation MA(''q'') refers to the moving average model of order ''q'':
 
:<math> X_t = \mu + \varepsilon_t + \sum_{i=1}^q \theta_i \varepsilon_{t-i}\,</math>
 
where the θ<sub>1</sub>, ..., θ<sub>''q''</sub> are the parameters of the model, μ is the expectation of <math>X_t</math> (often assumed to equal 0), and the <math>\varepsilon_t</math>, <math>\varepsilon_{t-1}</math>,... are again, [[white noise]] error terms. The moving-average model is essentially a [[finite impulse response]] filter with some additional interpretation placed on it.
 
The notation ARMA(''p'', ''q'') refers to the model with ''p'' autoregressive terms and ''q'' moving-average terms. This model contains the AR(''p'') and MA(''q'') models,
 
:<math> X_t = c + \varepsilon_t +  \sum_{i=1}^p \varphi_i X_{t-i} + \sum_{i=1}^q \theta_i \varepsilon_{t-i}.\,</math>
 
The general ARMA model was described in the 1951 thesis of [[Peter Whittle]], who used mathematical analysis ([[Laurent series]] and [[Fourier analysis]]) and statistical inference.<ref>{{cite book|last=Hannan|first=Edward James|authorlink=Edward James Hannan|title=Multiple time series|series=Wiley series in probability and mathematical statistics|year=1970|location=New York|publisher=John Wiley and Sons|ref=harv}}</ref><ref>{{cite book|title=Hypothesis Testing in Time Series Analysis|author=Whittle, P.|publisher=Almquist and Wicksell|year=1951}}
 
{{cite book|title=Prediction and Regulation|author=Whittle, P.|publisher=English Universities Press|year=1963|isbn=0-8166-1147-5}}
 
:Republished as: {{cite book|title=Prediction and Regulation by Linear Least-Square Methods|author=Whittle, P.|publisher=University of Minnesota Press|year=1983|isbn=0-8166-1148-3}}</ref> ARMA models were popularized by a 1971 book by [[George E. P. Box]] and Jenkins, who expounded an iterative ([[Box–Jenkins]]) method for choosing and estimating them. This method was useful for low-order polynomials (of degree three or less).<ref>{{harvtxt|Hannan|Deistler|1988|loc=p. 227}}: {{cite book|last=Hannan|first=E. J.|authorlink=Edward James Hannan|last2=Deistler|first2=Manfred|title=Statistical theory of linear systems|series=Wiley series in probability and mathematical statistics|year=1988|location=New York|publisher=John Wiley and Sons|ref=harv}}</ref>
 
== Note about the error terms ==
 
The error terms <math>\varepsilon_t</math> are generally assumed to be [[independent identically distributed random variables]] (i.i.d.)  sampled from a [[normal distribution]] with zero mean: <math>\varepsilon_t</math>  ~ N(0,σ<sup>2</sup>) where σ<sup>2</sup> is
the variance. These assumptions may be weakened but doing so will change the properties of the model.  In particular, a change to the i.i.d. assumption would make a rather fundamental difference.
 
== Specification in terms of lag operator ==
 
In some texts the models will be specified in terms of the [[lag operator]] ''L''.
In these terms then the AR(''p'') model is given by
 
:<math> \varepsilon_t = \left(1 - \sum_{i=1}^p \varphi_i L^i\right) X_t =  \varphi (L) X_t\,</math>
 
where <math>\varphi</math> represents the polynomial
 
:<math> \varphi (L) = 1 - \sum_{i=1}^p \varphi_i L^i.\,</math>
 
The MA(''q'') model is given by
 
:<math> X_t = \left(1 + \sum_{i=1}^q \theta_i L^i\right) \varepsilon_t = \theta (L) \varepsilon_t , \,</math>
 
where θ represents the polynomial
 
:<math> \theta(L)= 1 + \sum_{i=1}^q \theta_i L^i .\,</math>
 
Finally, the combined ARMA(''p'', ''q'') model is given by
 
:<math> \left(1 - \sum_{i=1}^p \varphi_i L^i\right) X_t = \left(1 + \sum_{i=1}^q \theta_i L^i\right) \varepsilon_t \, ,</math>
 
or more concisely,
 
:<math> \varphi(L) X_t = \theta(L) \varepsilon_t \, </math>
 
or
 
:<math> \frac{\varphi(L)}{\theta(L)}X_t = \varepsilon_t \, .</math>
 
=== Alternative notation ===
Some authors, including [[George Box|Box]], [[Gwilym M. Jenkins|Jenkins]] & Reinsel use a different convention for the autoregression coefficients.<ref>{{cite book |first=George |last=Box |first2=Gwilym M. |last2=Jenkins |first3=Gregory C. |last3=Reinsel |title=Time Series Analysis: Forecasting and Control |edition=Third |publisher=Prentice-Hall |year=1994 |isbn=0130607746 }}</ref> This allows all the polynomials involving the lag operator to appear in a similar form throughout. Thus the ARMA model would be written as
:<math> \left(1 + \sum_{i=1}^p \phi_i L^i\right) X_t = \left(1 + \sum_{i=1}^q \theta_i L^i\right) \varepsilon_t \, .</math>
 
== Fitting models ==
 
ARMA models in general can, after choosing p and q, be fitted by [[least squares]] regression to find the values of the parameters which minimize the error term.  It is generally considered good practice to find the smallest values of p and q which provide an acceptable fit to the data. For a pure AR model the [[AR model#Calculation of the AR parameters|Yule-Walker equations]] may be used to provide a fit.
 
Finding appropriate values of ''p'' and ''q'' in the ARMA(''p'',''q'') model can be facilitated by plotting the [[partial autocorrelation function]]s for an estimate of ''p'', and likewise using the [[autocorrelation function]]s for an estimate of ''q''. Further information can be gleaned by considering the same functions for the residuals of a model fitted with an initial selection of ''p'' and ''q''.
 
Brockwell and Davis recommend using [[Akaike information criterion|AICc]] for finding ''p'' and ''q''.<ref>{{cite book |last=Brockwell |first=P. J. |last2=Davis |first2=R. A. |title=Time Series: Theory and Methods |edition=2nd |publisher=Springer |location=New York |year=2009 |page=273 |isbn=9781441903198 }}</ref>
 
=== Implementations in statistics packages ===
* In [[R (programming language)|R]], the ''arima'' function (in standard package ''stats'') is documented in [http://search.r-project.org/R/library/stats/html/arima.html ARIMA Modelling of Time Series]. Extension packages contain related and extended functionality, e.g., the ''tseries'' package includes an ''arma'' function, documented in [http://finzi.psych.upenn.edu/R/library/tseries/html/arma.html "Fit ARMA Models to Time Series"]; the [http://cran.r-project.org/web/packages/fracdiff ''fracdiff'' package] contains ''fracdiff()'' for fractionally integrated ARMA processes, etc.  The CRAN task view on [http://cran.r-project.org/web/views/TimeSeries.html Time Series] contains links to most of these.
* [[Mathematica]] has a complete library of time series functions including ARMA.<ref>[http://www.wolfram.com/products/applications/timeseries/features.html Time series features in Mathematica]</ref>
* [[MATLAB]] includes functions such as [http://www.mathworks.com/help/ident/ref/ar.html ''ar''] to estimate AR, ARX (autoregressive exogeneous), and ARMAX models. [http://www.mathworks.com/help/ident/ug/estimating-ar-and-arma-models.html See here for more details].
* [[IMSL Numerical Libraries]] are libraries of numerical analysis functionality including ARMA and ARIMA procedures implemented in standard programming languages like C, Java, C# .NET, and Fortran.
* [[gretl]] can also estimate ARMA models, [http://constantdream.wordpress.com/2008/03/16/gnu-regression-econometrics-and-time-series-library-gretl/ see here where it's mentioned].
* [[GNU Octave]] can estimate AR models using functions from the extra package [http://octave.sourceforge.net/ octave-forge].
* [[Stata]] includes the function ''arima'' which can estimate ARMA and [[Autoregressive integrated moving average|ARIMA]] models. [http://www.stata.com/help.cgi?arima. See here for more details].
* [[SuanShu]] is a Java library of numerical methods, including comprehensive statistics packages, in which univariate/multivariate ARMA, ARIMA, ARMAX, etc. models are implemented in an object-oriented approach. These implementations are documented in [http://www.numericalmethod.com/javadoc/suanshu/ "SuanShu, a Java numerical and statistical library"].
* SAS has an econometric package, ETS, that estimates ARIMA models. [http://support.sas.com/rnd/app/ets/proc/ets_arima.html See here for more details].
 
== Applications ==
ARMA is appropriate when a system is a function of a series of unobserved shocks (the MA part){{Clarify|date=March 2008}} as well as its own behavior.  For example, stock prices may be shocked by fundamental information as well as exhibiting technical trending and mean-reversion effects due to market participants.
 
== Generalizations ==
 
The dependence of ''X''<sub>''t''</sub> on past values and the error terms ε<sub>t</sub> is assumed to be linear unless specified otherwise. If the dependence is nonlinear, the model is specifically called a ''nonlinear moving average'' (NMA), ''nonlinear autoregressive'' (NAR), or ''nonlinear autoregressive–moving-average'' (NARMA) model.
 
Autoregressive–moving-average models can be generalized in other ways. See also [[autoregressive conditional heteroskedasticity]] (ARCH) models and [[autoregressive integrated moving average]] (ARIMA) models.  If multiple time series are to be fitted then a vector ARIMA (or VARIMA) model may be fitted.  If the time-series in question exhibits long memory then fractional ARIMA (FARIMA, sometimes called ARFIMA) modelling may be appropriate: see [[Autoregressive fractionally integrated moving average]].  If the data is thought to contain seasonal effects, it may be modeled by a SARIMA (seasonal ARIMA) or a periodic ARMA model.
 
Another generalization is the ''multiscale autoregressive'' (MAR) model.  A MAR model is indexed by the nodes of a tree, whereas a standard (discrete time) autoregressive model is indexed by integers.
 
Note that the ARMA model is a '''univariate''' model. Extensions for the multivariate case are the [[Vector Autoregression]] (VAR) and Vector Autoregression Moving-Average (VARMA).
 
=== Autoregressive–moving-average model with exogenous inputs model (ARMAX model) === <!-- This section is linked from [[ARMAX]], so if you change the title, please also change the corresponding link in the ARMAX page -->
 
The notation ARMAX(''p'', ''q'', ''b'') refers to the model with ''p'' autoregressive terms, ''q'' moving average terms and ''b'' exogenous inputs terms. This model contains the AR(''p'') and MA(''q'') models and a linear combination of the last ''b'' terms of a known and external time series <math>d_t</math>. It is given by:
 
:<math> X_t = \varepsilon_t +  \sum_{i=1}^p \varphi_i X_{t-i} + \sum_{i=1}^q \theta_i \varepsilon_{t-i} + \sum_{i=0}^b \eta_i d_{t-i}.\,</math>
where <math>\eta_1, \ldots, \eta_b</math> are the '''''parameters''''' of the exogenous input <math>d_t</math>.
 
Some nonlinear variants of models with exogenous variables have been defined: see for example [[Nonlinear autoregressive exogenous model]].
 
Statistical packages implement the ARMAX model through the use of "exogenous" or "independent" variables. Care must be taken when interpreting the output of those packages, because the estimated parameters usually (for example, in [[R (programming language)|R]]<ref name="R.stats.arima">[http://search.r-project.org/R/library/stats/html/arima.html ARIMA Modelling of Time Series], R documentation</ref> and [[gretl]]) refer to the regression:
: <math> X_t - m_t = \varepsilon_t + \sum_{i=1}^p \varphi_i (X_{t-i} - m_{t-i}) + \sum_{i=1}^q \theta_i \varepsilon_{t-i}.\,</math>
where ''m<sub>t</sub>'' incorporates all exogenous (or independent) variables:
: <math>m_t = c + \sum_{i=0}^b \eta_i d_{t-i}.\,</math>
 
== See also ==
 
*[[Exponential smoothing]]
*[[Linear predictive coding]]
*[[Predictive analytics]]
*[[Demetra+]]
 
{{More footnotes|date=August 2010}}
 
== References ==
{{Reflist}}
 
== Further reading ==
*{{cite book |last=Mills |first=Terence C. |title=Time Series Techniques for Economists |publisher=Cambridge University Press |location=New York |year=1990 |isbn=0521343399 }}
*{{cite book |last=Percival |first=Donald B. |first2=Andrew T. |last2=Walden |title=Spectral Analysis for Physical Applications |publisher=Cambridge University Press |location=New York |year=1993 |isbn=052135532X }}
 
{{Stochastic processes}}
{{Statistics|analysis}}
 
{{DEFAULTSORT:Autoregressive-Moving-Average Model}}
[[Category:Noise]]
[[Category:Time series analysis]]

Latest revision as of 21:40, 12 December 2013

28 year-old Painting Investments Worker Truman from Regina, usually spends time with pastimes for instance interior design, property developers in new launch ec Singapore and writing. Last month just traveled to City of the Renaissance.

In the statistical analysis of time series, autoregressive–moving-average (ARMA) models provide a parsimonious description of a (weakly) stationary stochastic process in terms of two polynomials, one for the auto-regression and the second for the moving average. The general ARMA model was described in the 1951 thesis of Peter Whittle, Hypothesis testing in time series analysis, and it was popularized in the 1971 book by George E. P. Box and Gwilym Jenkins.

Given a time series of data Xt, the ARMA model is a tool for understanding and, perhaps, predicting future values in this series. The model consists of two parts, an autoregressive (AR) part and a moving average (MA) part. The model is usually then referred to as the ARMA(p,q) model where p is the order of the autoregressive part and q is the order of the moving average part (as defined below).

Autoregressive model

Mining Engineer (Excluding Oil ) Truman from Alma, loves to spend time knotting, largest property developers in singapore developers in singapore and stamp collecting. Recently had a family visit to Urnes Stave Church. The notation AR(p) refers to the autoregressive model of order p. The AR(p) model is written

where are parameters, is a constant, and the random variable is white noise.

An autoregressive model is essentially an all-pole infinite impulse response filter with some additional interpretation placed on it.

Some constraints are necessary on the values of the parameters of this model in order that the model remains stationary. For example, processes in the AR(1) model with |φ1| ≥ 1 are not stationary.

Moving-average model

Mining Engineer (Excluding Oil ) Truman from Alma, loves to spend time knotting, largest property developers in singapore developers in singapore and stamp collecting. Recently had a family visit to Urnes Stave Church. The notation MA(q) refers to the moving average model of order q:

where the θ1, ..., θq are the parameters of the model, μ is the expectation of (often assumed to equal 0), and the , ,... are again, white noise error terms. The moving-average model is essentially a finite impulse response filter with some additional interpretation placed on it.

The notation ARMA(p, q) refers to the model with p autoregressive terms and q moving-average terms. This model contains the AR(p) and MA(q) models,

The general ARMA model was described in the 1951 thesis of Peter Whittle, who used mathematical analysis (Laurent series and Fourier analysis) and statistical inference.[1][2] ARMA models were popularized by a 1971 book by George E. P. Box and Jenkins, who expounded an iterative (Box–Jenkins) method for choosing and estimating them. This method was useful for low-order polynomials (of degree three or less).[3]

Note about the error terms

The error terms are generally assumed to be independent identically distributed random variables (i.i.d.) sampled from a normal distribution with zero mean: ~ N(0,σ2) where σ2 is the variance. These assumptions may be weakened but doing so will change the properties of the model. In particular, a change to the i.i.d. assumption would make a rather fundamental difference.

Specification in terms of lag operator

In some texts the models will be specified in terms of the lag operator L. In these terms then the AR(p) model is given by

where represents the polynomial

The MA(q) model is given by

where θ represents the polynomial

Finally, the combined ARMA(p, q) model is given by

or more concisely,

or

Alternative notation

Some authors, including Box, Jenkins & Reinsel use a different convention for the autoregression coefficients.[4] This allows all the polynomials involving the lag operator to appear in a similar form throughout. Thus the ARMA model would be written as

Fitting models

ARMA models in general can, after choosing p and q, be fitted by least squares regression to find the values of the parameters which minimize the error term. It is generally considered good practice to find the smallest values of p and q which provide an acceptable fit to the data. For a pure AR model the Yule-Walker equations may be used to provide a fit.

Finding appropriate values of p and q in the ARMA(p,q) model can be facilitated by plotting the partial autocorrelation functions for an estimate of p, and likewise using the autocorrelation functions for an estimate of q. Further information can be gleaned by considering the same functions for the residuals of a model fitted with an initial selection of p and q.

Brockwell and Davis recommend using AICc for finding p and q.[5]

Implementations in statistics packages

Applications

ARMA is appropriate when a system is a function of a series of unobserved shocks (the MA part)Template:Clarify as well as its own behavior. For example, stock prices may be shocked by fundamental information as well as exhibiting technical trending and mean-reversion effects due to market participants.

Generalizations

The dependence of Xt on past values and the error terms εt is assumed to be linear unless specified otherwise. If the dependence is nonlinear, the model is specifically called a nonlinear moving average (NMA), nonlinear autoregressive (NAR), or nonlinear autoregressive–moving-average (NARMA) model.

Autoregressive–moving-average models can be generalized in other ways. See also autoregressive conditional heteroskedasticity (ARCH) models and autoregressive integrated moving average (ARIMA) models. If multiple time series are to be fitted then a vector ARIMA (or VARIMA) model may be fitted. If the time-series in question exhibits long memory then fractional ARIMA (FARIMA, sometimes called ARFIMA) modelling may be appropriate: see Autoregressive fractionally integrated moving average. If the data is thought to contain seasonal effects, it may be modeled by a SARIMA (seasonal ARIMA) or a periodic ARMA model.

Another generalization is the multiscale autoregressive (MAR) model. A MAR model is indexed by the nodes of a tree, whereas a standard (discrete time) autoregressive model is indexed by integers.

Note that the ARMA model is a univariate model. Extensions for the multivariate case are the Vector Autoregression (VAR) and Vector Autoregression Moving-Average (VARMA).

Autoregressive–moving-average model with exogenous inputs model (ARMAX model)

The notation ARMAX(p, q, b) refers to the model with p autoregressive terms, q moving average terms and b exogenous inputs terms. This model contains the AR(p) and MA(q) models and a linear combination of the last b terms of a known and external time series . It is given by:

where are the parameters of the exogenous input .

Some nonlinear variants of models with exogenous variables have been defined: see for example Nonlinear autoregressive exogenous model.

Statistical packages implement the ARMAX model through the use of "exogenous" or "independent" variables. Care must be taken when interpreting the output of those packages, because the estimated parameters usually (for example, in R[7] and gretl) refer to the regression:

where mt incorporates all exogenous (or independent) variables:

See also

Template:More footnotes

References

43 year old Petroleum Engineer Harry from Deep River, usually spends time with hobbies and interests like renting movies, property developers in singapore new condominium and vehicle racing. Constantly enjoys going to destinations like Camino Real de Tierra Adentro.

Further reading

  • 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  • 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534

Template:Stochastic processes Template:Statistics

  1. 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  2. 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
    Republished as: 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  3. Template:Harvtxt: 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  4. 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  5. 20 year-old Real Estate Agent Rusty from Saint-Paul, has hobbies and interests which includes monopoly, property developers in singapore and poker. Will soon undertake a contiki trip that may include going to the Lower Valley of the Omo.

    My blog: http://www.primaboinca.com/view_profile.php?userid=5889534
  6. Time series features in Mathematica
  7. ARIMA Modelling of Time Series, R documentation