Download OLLSCOIL NA hÉIREANN MÁ NUAD

Survey
yes no Was this document useful for you?
   Thank you for your participation!

* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project

Document related concepts

Data assimilation wikipedia , lookup

Expectation–maximization algorithm wikipedia , lookup

Regression analysis wikipedia , lookup

Time series wikipedia , lookup

Linear regression wikipedia , lookup

Coefficient of determination wikipedia , lookup

Transcript
CS416 -Adaptive Modelling
OLLSCOIL NA hÉIREANN MÁ NUAD
NATIONAL UNIVERSITY OF IRELAND, MAYNOOTH
B.SC. COMPUTER SCIENCE EXAMINATION
B.SC. COMPUTER SCIENCE AND SOFTWARE ENGINEERING EXAMINATION
MASTER OF COMPUTER SCIENCE EXAMINATION
AUTUMN 2003
PAPER CS416
ADAPTIVE MODELLING AND PREDICTION OF THE REAL WORLD
Dr. R. Procter, Prof. R. Reilly, Dr. R. Shorten, Professor D. Leith
Attempt any THREE questions. Time Allowed: 2 hours.
1 (a) Explain the following terms:
(i)
recursive least squares;
(ii)
persistence of excitation;
(iii)
a regressor matrix.
(b) Explain the principle of least squares.
[6 marks]
[6 marks]
(c) Use the principle of least squares to fit a line of the form
[15 marks]
y  ax  b
to the following data points.
x
-1
0
1
2
3
4
5
6
y
-10
1
1
2
4
3
1
1
(d) Explain how the recursive least squares algorithm can be modified to identify
the parameters of time varying linear-in-parameter model. Explain
clearly the effect of the forgetting factor.
CS416
Page 1 of 2
[6 marks]
SUMMER 2003
CS416 -Adaptive Modelling
2 (a) Explain the following terms:
(i)
an initial value problem;
(ii)
global truncation error;
(iii)
a system of ODE’s.
[6 marks]
(b) Explain briefly the Euler and Runge-Kutta methods for approximating the
solution to an initial value problem.
[6 marks]
(c) The fourth order Runge-Kutta formula for solving the first order initial value
problem
[15 marks]
dy
 f ( t , y ), y( t 0 )  y 0 ,
dt
yields the following equations
ŷ k 1  ŷ k 
h
( k 1  2k 2  2k 3  k 4 )
6
where
k 1  f ( t k , ŷ k )
hk
h
, ŷ k  1 )
2
2
hk
h
k 3  f ( t k  , ŷ k  2 )
2
2
k 4  f ( t k  h , ŷ k  hk 3 )
k2  f ( tk 
Apply the Runge-Kutta fourth order method to approximate the solution to the
initial value problem at t == 0, 0.1, 0.2 seconds respectively.
dy
 t  y,
dt
y( 0 )  0,
h  0.1
(d) The Euler method is called a first order method. Why?
[5 marks]
3 (a) Define what is meant by a linear difference equation. Write down the explicit
solution to an unforced first-order linear difference equation. When is the
system stable, unstable, marginally stable ?
[6 marks]
(b) The solutions to linear difference equations and linear differential equations are
closely related. Discuss.
[6 marks]
A difference equation relates an output yn to its previous values (yn-1, yn-2, …,
CS416
Page 2 of 2
SUMMER 2003
CS416 -Adaptive Modelling
yn-m). Say we have that
m
yi    j yi  j
j 1
Suppose that the parameters j are unknown and we would like to estimate them
from observed data. Letting Yi-1 denote the vector (yi-1, yi-2, …, yi-n), we have a
sample of N pairs of data yi, Yi, i=1,2,…,N contaminated by gaussian white
noise with mean zero and variance 2.
(c) How could this estimation task be formulated as a linear regression problem ?
What are the least-squares parameter estimates ?
[10 marks]
(d) Let ̂ j denote the estimated parameter values. Decompose the mean square
[11 marks]
error E j  ˆ j 2 into bias and variance components. Is the bias zero ? How
does working with a dynamic system differ from working with a static one in
terms of the impact on the bias and variance ?
Suppose y is related to the inputs (x1, x2, …, xp) by
4
y = f(x1, x2, …, xp)
Let X denote the vector of inputs (x1, x2, …, xp). The function f is unknown, but
we have a sample of N pairs of measurements yi, Xi, i=1,2,…,N. Using this
sample our task is to estimate f.
(a) Write down short pseudo-code for a k-nearest neighbour estimator.
[6 marks]
(b) The k-nearest neighbour estimator can be biased near the edges of the training
data. Briefly discuss the reasons for this.
[6 marks]
(c) Local linear regression can be used to reduce such edge bias. How would the k- [10 marks]
nearest neighbour pseudo-code need to be modified to implement a local linear
regression estimator ?
(d) k-nearest neighbour methods estimators rely on the function being roughly
[11 marks]
constant over a neighbourhood which in turn requires that the neighbourhood be
“local” or “small”. Suppose that the input points Xi are distributed uniformly
over a unit p-dimensional cube. Suppose also that our nearest neighbour
estimator uses a neighbourhood which includes a fraction r of the data points.
How does the size and volume of this neighbourhood vary as the input
dimension p increases ? What are the implications for the k-nearest neighbour
estimator ?
CS416
Page 3 of 2
SUMMER 2003