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Data Handling

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Page 1: Data Handling
Page 2: Data Handling
Page 3: Data Handling
Page 4: Data Handling

THE HANDLING DATA CYCLE

Page 5: Data Handling

DATAIn our daily life, you might have come acrossinformation, such as: Runs made by a batsman in the last 10test matches Number of wickets taken by a bowler in the last 10

ODI’s Marks scored by the students of your class in

mathematics unit test.The information collected in all such cases is data. Data is usually collected in the context of thesituation that we want to study. For example a teachermay like to know the average height of the students inher class. To find this she will arrange the data insystematic form.

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REPRESENTATION OF DATASome times data is represented graphically togive a clear idea of what it represents.

There are three different types of graphs which wehave learnt in earlier classes :-

Pictograph

Bar graph

Double bar graph

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PICTOGRAPH A Pictograph represents data using pictures or

symbols. = 2

Flowers

Month PictographJanuary

= 6 Flowers

February = 8 Flowers

March = 4 Flowers

Page 8: Data Handling

BARGRAPH A bar graph displays information using

bars of uniform width, their heights being proportional to the respective values.

1 unit=1000 cars

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DOUBLE BAR GRAPH A double bar graph shows two sets of

data simultaneously. It is useful for the comparison of the data. 1 unit=20 marks

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RAW DATA Usually data available to us is in an

unorganized form called raw data. To draw a meaningful inference we have to organize it into a systematic form. For example, a group of students was asked for their favorite subject. The results were listed below:

Art, Science, English, Science, English, Art, English, Science, Art, English.

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TALLY MARKS It is not easy to answer the question looking at the

choices written haphazardly. We arrange the data in the given table.

Subject Tally Marks

Number of Students

Art │││ 3

Science │││ 3

English ││││ 4

The number of tallies before each subject gives the number of students who like that particular subject.This is known as frequency.

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FREQUENCY Frequency gives the number of times that a

particular entry occurs.

Subject Tally Marks

Number of Students

Art │││ 3

Science │││ 3

English ││││ 4In the above table the :- Frequency of English is 4 Frequency of Science is 3 The table made is known as frequency distribution table as it give the number of times a entry occurs.

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GROUPING DATA The Information can be displayed graphically

using pictograph or a bar graph. Sometimes, however, we have deal with a large data. For example consider the following marks(out of 50) obtained in Mathematics by 60 students of Class VШ :

21,10,30,22,33,5,37,12,25,42,15,39,26,32,18,27, 28,19,29,35,31,24,36,18,20,38,22,44,16,24,10,27, 39,28,49,29,32,23,31,21,34,22,23,36,24,36,33,47, 48, 50,39,20,7,16,36,45,47,30,22,17.

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If we will make a frequency distribution table for each observation, then the table would be too long, so, for convenience, we must make groups of the observation.

Groups Tally Marks Frequency

0-20 ЇЇ 2

10-20 ИИ ИИ 10

20-30 ИИ ИИ ИИ ИИ Ї 21

30-40 ИИ ИИ ИИ ЇЇЇЇ 19

40-50 ИИ ЇЇ 7

50-60 Ї 1

Total 60

Data presented in this manner is said to be grouped and the distribution obtained is called grouped frequency distribution.

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(1) Most of the students have scored between 20 and 40

(2) Eight students have scored more than 40 marks out of 50 and so on.

Each groups 0-10,10-20,20-30,30-40,etc..,

is called a Class interval.

In the class interval 10-20 10 is the lower class limit and 20 is the upper class limit.

The difference between the upper class limit and the lower class limit is called the width or size of the class interval.

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BARS WITH DIFFERENCE Let us consider again the grouped frequency

distribution of the marks obtained by 60 students in Mathematics test. Groups Tally Marks Frequency

0-20 ЇЇ 2

10-20 ИИ ИИ 10

20-30 ИИ ИИ ИИ ИИ Ї 21

30-40 ИИ ИИ ИИ ЇЇЇЇ 19

40-50 ИИ ЇЇ 7

50-60 Ї 1

Total 60

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Let us represent this graphically.

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Observe, that here we have represented the

groups of observation on the horizontal axis. The height of the bars show the frequency of the class-interval.

Also there is no gap between the bars as

there is no gap between the class intervals. The graphical representation of the data in

this manner is called a histogram.

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PIE CHARTS Have you ever came across data represented

in circular forms as shown.

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These are called pie charts. A pie chart shows the relationship between a whole and its parts. Hence, the whole circle is divided into sectors. The size of each sector is proportional to the activity of information it represents.

For example, in the above graph, the proportional of the sector for hours spent in sleeping.

= ——————————— = ———————

So, this sector is drawn as rd part of the circle.

Similarly, the proportional of the sector for schoolhours = —————— = ———

Number of sleeping hours Whole day

8 hours

24 hours

1——3

6 hours

24 hours

1

4

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CHANCE AND PROBABILITY An experiment whose outcome is not fixed or

the experiment whose result is guessed is relater to chance and probability.

The outcomes of such actions ,as tossing a

coin, throwing up a die all depends on chance.

Such an experiment whose outcome is not

fixed is called a random experiment.

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So, the probability of G in the above wheel is:

= ———————————— = —————— = ———— Number of times

Total number of parts

6

8

3

4

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