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A statistical time series(时间序列分析讲义、课件、练习、参考资料) [推广有奖]

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peterf 在职认证  发表于 2006-3-31 11:05:00 |AI写论文

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A statistical time series is a sequence of random variables $X_t$, the index $t\in Z$ being referred to as ``time''. Thus a time series is a "discrete time stochastic process". Typically the variables are dependent and one aim is to predict the ``future'' given observations $X_1,\ldots, X_n$ on the ``past''. Although the basic statistical concepts apply (such as likelihood, mean square errors, etc.) the dependence gives time series analysis a distinctive flavour. The models are concerned with specifying the time relations, and the probabilistic tools (e.g. the central limit theorem) must go beyond results for independent random variables.

This course is an introduction for mathematics students to the theory of time series, including prediction theory, spectral (=Fourier) theory, and parameter estimation.

Among the time series models we discuss are the classical ARMA processes, and also the GARCH and stochastic volatility processes, which have become popular models for financial time series. We study the existence of stationary versions of these processes, and, if time allows, also the unit-root problem and co-integration. State space models include Markov processes and hidden Markov processes. We do not go into much detail in the probabilistic properties of such processes, but methods of parameter estimation apply to such processes and we may discuss prediction through the famous Kalman filter.

Within the context of nonparametric estimation we may discuss the ergodic theorem and extend the central limit theorem to dependent ("mixing") random variables. Thus the course is a mixture of probability and statistics, with some Hilbert space theory coming in to develop the spectral theory and the prediction problem.

Many of the procedures that we discuss are implemented in the statistical computer package Splus, and are easy to use. We recommend trying out these procedures, because they give additional insight that is hard to obtain from theory only. A hand-out on Splus is provided.

We assume that the audience is familiar with measure theory, and basic concepts of statistics. Knowledge of measure-theoretic probability, stochastic convergence concepts, and Hilbert spaces is recommended. We presume no knowledge of time series analysis.

We provide full lecture notes. Two books that cover a part of the course are:

  • R Azencott, D Dacunha-Castelle, 1984, S\'eries d'Observations Irr\'eguli\`eres, Masson, Paris.
  • PJ Brockwell, RA Davis, 1991, Time Series: Theory and Methods, Springer, New York.

These books are a bit dated. An expanded list of literature is provided with the lecture notes.

Course Fall 2004

Course hours: Wednesdays 13.30--16.15
Lecture room: September-October: F 654, VU-Science/Mathematics (different from schedule); November 3-December: until further notice we start in F 654, but may have to move to 11A10, VU-Main building (tower, 11th floor). In particular, on 10 November we gather in F 654.
First meeting: 8 September 2004
Last meeting: 8 December 2004
Fall break (no lecture): 20 October 2004
Office hour: Friday 13.30-14.30, Room R 3.33
Problem class: None. Worked exercises from the lecture notes can be handed in, or discussed at office hours.
Lecturer: Prof.dr. A.W. van der Vaart.
First course (8 September) given by Dr. H.J. van Zanten.
Exam: Oral, written or project, to be discussed. Handing in of correct solutions to the homework problems + attending the lectures can also count as an exam, for 6 ECTS. To obtain 9 ECTS it is necessary to do a small project (e.g. literature study or data-analysis) following the course.
Credits: 6, 7 or 9, to be discussed.
Language: The course will be given in English.
Preliminary course schedule: See here .

To gain better insight in time series we recommend that students perform some computer simulations. One possibility is the use of Splus or R. A short introduction to R/Splus functions that deal with time series can be found here . (This presumes basic knowledge of Splus, as can be found in the R/Splus handleiding that is for sale in the bookshop, or the official manual, of course).

Old Lecture Notes

Lecture Notes 2002 in ps (> 2MB)

46360.pdf (1.2 MB, 需要: 5 个论坛币)

(1.2 MB)

Old Written Exams

[此贴子已经被作者于2006-3-31 16:53:00编辑过]

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关键词:Time Series Statistical statistica statistic 时间序列分析讲义 课件 Statistical 参考资料 时间序列分析 Series

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peterf(未真实交易用户) 在职认证  发表于 2006-3-31 11:15:00
If someone no money,tell me or send message to me.this is a hyperlink.You can see more detail in it.
徘徊在统计学的大门之外

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