Title: Dr' K' Gururajan
1About the Author
Dr. K. Gururajan Assistant Professor Department
of Mathematics Malnad College of
Engineering Hassan 573 201 Contact Number ?
98459 84291 Email kguru.hsn_at_gmail.com
2- Introduction To
- Correlation and Regression
- Curve Fitting
- Basic Probability theory
- Random Variables
- Standard Distribution Functions of a
- Random Variable
- Hypothesis Testing
3OBJECTIVE OF THE COURSE The main purpose is to
introduce to students a new approach, namely,
probabilistic technique of solving problems for
which either the solution is un-known in advance
or is un-predictable. It is seen that problems of
this kind has received considerable attention
from engineers, researchers, and from people
working in their relevant fields.
4DISCUSSION ON CORRELATION AND REGRESSION
- It is known that in many experiments, results are
dependent on one or more parameters. Suppose
that the change in the numerical values of one
variable affects the changes in the other
variables, then we say that the variables are
correlated. The relationship that exists is
called correlation or co relation
5Continued . . . .
- From an analysis view point, it is necessary
to measure the degree of relationship existing
between the variables. This is done by using a
measure called correlation coefficient or
correlation index which summarizes in one figure
the direction and degree of correlation. The
correlation analysis refers to the techniques
used in the measuring the closeness of the
relationship between the variables without
influencing or manipulation any variables.
6CURVE FITTING
Introduction-
- Scientists and engineers often want to
represent empirical data obtained from an
experiment, using a model based on mathematical
equations. With the correct model and necessary
calculus, one can determine/estimate important
characteristics of the data, such as the rate of
change anywhere on the curve (first derivative),
the local minimum and maximum points of the
function (zeros of the first derivative), and the
area under the curve (integral) and so on.
7- Therefore, finding a best mathematical model
to a data is an important problem from both
theoretical and as well as from practical view
point. With these considerations, the following
sections deals with ways of obtaining different
mathematical equations for a given data.
8Basic Probability Theory
- Before coming to a discussion of the topic
probability, let us consider few examples that
would certainly explain the importance of
probability theory in many fields. - Consider a person Mr. X purchasing a computer
system from a leading firm in Bangalore.
Naturally, Mr. X will have the following
questions in mind before buying
9Continued . . . .
- The quality of product
- The price of the system?
- The working conditions of the components of the
system? - The life of the computer system?
- Is there any guarantee period for the components?
In case, if some components get repaired, is
there any chance of replacement etc?
10Continued . . . .
- Solutions to problems of this kind have been
given considering probabilistic approach as the
basis. In view of these, - In this course, students will be introduced to
probability, and other related topics such as
Random Variables, Distribution Functions and so
on. After instruction, students will be in a
position to use theory of probability as a basis
to solve Engineering Problems.
11Testing of Hypothesis
- In many situations, we come across the problem of
testing some parameters about a population of
large size. Here, usually we select a sample
of small size using a sampling approach and study
the sample. Based on this analysis, we try to
predict about the characteristics of population
parameter. This problem is called hypothesis
testing.
12Continued . . .
- For example, consider the problem of
13What is curve fitting?
- Curve fitting means finding a best mathematical
representation which closely match the given
data. The procedure involves the calculation of
parameter values of the mathematical equations. - Most curve fitting problems is based on least
square principle, which states that The sum of
squares of differences between actual values and
observed values must be least.
14- The current syllabus is restricted only to
finding parameter values of the equations
15First we shall consider the problem of fitting a
straight line, to the following data
.
.
.
.
.
.
16Solution-
- We fit a straight line of the form
according to Least Square Principle, i.e. the
sum of squares of difference between actual
values and the observed values is least. Here,
are the actual values and the observed
values are respectively . . .
. . . . . . .
17Considering that
- is least, We derive equations for finding
the parameter values a and b. - From Differential Calculus, it is known that a
function of two variables attains an extreme
value only at points where the first order
partial derivatives vanishes. Now,
differentiating S with respect a and b
partially and equating these to zero, we obtain
the normal equations.
18By solving these two equations, one always one
obtain the values and a and b, hence the best
straight line
19- An illustrative example
- Fit a straight line to the data given below
20Solution The two normal equations are
and
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22Thus, normal equations are
Solving these two equations, we obtain Fit a
straight line to the data given below
x 1 2 3 4 5 6 y 9
8 10 12 11 13
23The two normal equations are
and
24Here, n 6. Consider
25The normal equations become
and
Solving these two, we get a and b and hence the
straight line
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