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Title: Probability and Statistics
Description: Subject content are for 3rd year students. random experiment, sample space, events and probability of event.

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Chapter 1
Introduction
Lectures 1 - 3
...

By a random experiment, we mean an experiment which has multiple outcomes and one don't know in
advance which outcome is going to occur
...
We assume
that the set of all possible outcomes of the experiment is known
...
1
...

Example 1
...
1 Toss a coin and note down the face
...

More over, the sample space is

Example 1
...
2 Toss two coins and note down the number of heads obtained
...


Example 1
...
3 Pick a point `at random' from the interval
picking any point
...
`At random' means there is no bias in


...
2 ( Event ) Any subset of a sample space is said to be an event
...
0
...
0
...


Definition 1
...

If

and

are mutually exclusive, then occurrence of

Note that non occurrence of
Example 1
...
5 The events
But the events

,

implies non occurrence of

need not imply occurrence of
,

, since

and vice versa
...
0
...


are not mutually exclusive
...
Intuitively
probability quantifies the chance of the occurrence of an event
...
In general it is not possible to assign probabilities to all events from the
sample space
...
0
...
So one need to restrict to a smaller class of subsets of the sample space
...
0
...
Therefore, one can assign probability to any finite union of intervals in
, by
representating the finite union of intervals as a finite disjoint union of intervals
...
Also note that if one can assign probability to an
event, then one can assign probability to its compliment, since occurence of the event is same as the
non-occurance of its compliemt
...
This leads to the following
special family of events where one can assign probabilities
...
4 A family of subsets
following
...
0
...
e
...
Moreover, if

is the smallest and

Then

Let

is a

Lemma 1
...
1

is a

is the largest

be a nonempty set and

-field and is the smallest

is called the

is a

be a nonempty set
...
0
...


-field generated by

Let

-field of subsets of

-field of subsets of

, then


...
Define

-field containing the set


...


be an index set and

be a family of

-fields
...


Proof
...
Now,

Similarly it follows that

Hence

is a

-field
...
0
...
Then

-field and is the smallest

-field containing

This can be seen as follows
...
0
...
If

-field containing

(ii) if

, then

-field containing

is a
, then

-field
...
Hence,


...
5 A family
(i)

is a


...
0
...

-field is a field
...
0
...



...


Note that (i) and (ii) in the definition of field follows easily
...
i
...
,
To see that

and if either

or

, if both

is finite, then

is finite
...


is not a

-field, take

Now

Definition 1
...
A map

is said to be

a probability measure if P satisfies
(i)
(ii) if

are pairwise disjoint, then

Definition 1
...

; where

The triplet

, a nonempty set (sample space),

,a

-field and

, a probability

measure; is called a probability space
...
Define

on

as follows
...
0
...
This probability space corresponds to the random experiment of

tossing an unbiased coin and noting the face
...
0
...


Solution
...
Define

on

as follows
...
Then

's are disjoint)

Therefore

Therefore properties (i) , (ii) are satisfied
...
0
...
Then

...
Since

,

is a probability measure
...
Now

Therefore

since


...


We prove (5) by induction
...
Hence by induction property (5) follows
...

Now we prove (6)(i)
...
0
...
0
...
0
...
0
...
0
...

Note that

Now using (6)(i) we have

i
...
,

Hence

From property (2), it follows that

i
...
,

Therefore
(1
...
4)
Set

Then

and are in


...
0
...
Using (1
...
5), letting
(1
...
4), we have

in

Recall that all the examples of probability spaces we had seen till now are with sample space finite or
countable and the

-field as the power set of the sample space
...

Consider the random experiment in Example 1
...
3, i
...


Since point is picked 'at random', the probability measure should satisfy the following
...
0
...



...
0
...
Set


...
then

can be represented as

where

,

Then

where

Therefore


...


is a field
...


(1
...
7)
where

's are pair wise disjoint intervals of the form
Extension of

from

to


...
To understand the

statement of the extension theorem, we need the following definition
...
8 (Probability measure on a field) Let

be a nonempty set and

be a field
...
0
...
0
...
0
...


Using Theorem 1
...
2, one can extend

defined by (1
...
7) to

see Exercise 1
...
Since

on

preserving (1
...
6)
...



Title: Probability and Statistics
Description: Subject content are for 3rd year students. random experiment, sample space, events and probability of event.