Download - statistics - Introduction Arranging Data
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STATISTICS-INTRODUCTION
Role of Statistics in Managerial Decisions Nature of Data, Population data ,Sample data. Frequency Distribution
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You use statistics daily without even realizing it!!!
You use statistics very often without even realising it !!!!!
Examples ??????
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Statistics is used to help determineWhich product I should sale (Demand stats) How much you pay for insurance (Mortality Stat) Whether drugs are approved for use (Drug trials) Which cars you buy (Reliability ratings, crash tests) Which products are on you grocery shelf (focus groups), and where they are located (Big Bazzar & Snacks Shop are right next to each otherwhat a concept!!!) What politicians claim as their firm beliefs (opinion polls). Favorites to win in sports. Whether it will rain And , on and on.*
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Statistics..Defn
Many people think of statistics as large amounts of numerical data, e.g. share prices, GDP statistics, runs scored by Sachin etc etc Definition : Statistics refers to the range of techniques and procedure for collecting data, summarizing data, classifying data, analyzing data, interpreting data, displaying data and making decisions based on data. Definition: By Statistics, we mean aggregate of facts, affected to a marked extent by multiplicity of causes, numerically expresses, enumerated or estimated accordingly to a reasonable standards of accuracy, collected in a systematic manner for a predetermined purpose and placed in relation to each other* Source: Footnote Source 4
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Characteristics of Statistics
Statistics are the aggregate of facts Statistics are affected to a marked extent by multiplicity of causes Statistics are numerically expressed Statistics are expressed according to reasonable standards of accuracy Statistics should be collected with reasonable standards of accuracy Statistics should be placed in relation to each other
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Why Study Statistics
It presents the facts in a definite & clear terms. It gives the concise shape to the mass of figures and develops meaning from the data It helps to compare between two sets of figures It helps in formulating & testing hypothesis It helps in understanding & predicting the future events, from the past & current data It helps in formulation of suitable policies It helps in understanding the complex happenings Statistics are widely used in business. Usage continues to increase as the business world becomes larger, more complex, and more quantitative.* Source: Footnote Source 6
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Limitations of Statistics
Statistics does not study individual observations. It is only concerned with groups of observations Statistics deals with quantitative characteristics. It does not deal with qualitative characteristics such as beauty, honesty, sharpness, brightness, poverty, intelligence etc Statistical laws are true only on averages Statistics does not reveal the entire story Statistics is only one of the methods of studying the problem Statistics can be misused Statistical data should be uniform & homogeneous.* Source: Footnote Source
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Decision Making - BusinessesAccounting Public accounting firms use statistical sampling procedures when conducting audits for their clients. Economics Economists use statistical information in making forecasts about the future of the economy or some aspect of it.
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Decision Making - BusinessesMarketing Electronic point-of-sale scanners at retail checkout counters are used to collect data for a variety of marketing research applications. Production A variety of statistical quality control charts are used to monitor the output of a production process.
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Decision Making - BusinessesFinance Financial advisors use price-earnings ratios and dividend yields to guide their investment recommendations.
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Uses & Abuses of Statistics
Most of the time, samples are used to infer something (draw conclusions) about the population. However, occasionally the conclusions are inaccurate or inaccurately portrayed for the following reasons: Sample is too small. Even a large sample may not represent the population. Unauthorized personnel are giving wrong information that the public will take as truth. A possibility is a company sponsoring a statistics research to prove that their company is better. Visual aids may be correct, but emphasize different aspects. Specific examples include graphs which don't start at zero thus exaggerating small differences and charts which misuse area to represent proportions. Precise statistics or parameters may incorrectly convey a sense of high accuracy. Misleading or unclear or incomplete information may be shared.* Source: Footnote Source 11
Misleading Statistical PresentationUnit of measure
These two graphs represent saleswho has seen faster sales growth?16000 14000 12000 10000 8000 6000 4000 2000 0 1 3 5 7 9 11 13 15 17 19 21 23 25 27 29 31 14000 13500 13000 12500 12000 11500 11000 10500 10000 1 3 5 7 9 11 13 15 17 19 21 23 25 27 29 31
These are actually the same numbers with different scales along the side.* Source: Footnote Source
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Pictures can be misleading alsoUnit of measure1 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1 0
R1
R2
How much more is the second?
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Its twice as tall, but its also twice as wide this means 4 times the volume It can be misleading.13
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Avoid Sensationalism!!!
e.g. Violence Stat: Yet another incident doubling the last years incidents Accident Stat: First day of the year accident making it 365 a year (Almost 36 times compared to last year, when we just had 10 accidents in a year)
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Branches of Statistics
The academic discipline of statistics can be divided into two major branches: Descriptive Inferential
statistics statistics.
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Descriptive Statistics
Deals with summarizing and presenting data in a readable, easily understood form. It is tabular, graphical, and numerical methods used to summarize data Techniques:
Visualizing and Summarizing Data: Raw Data, Data Array, Distribution Characterizing Distributions with Numerical and Graphical Tools: Histogram,Ogive, Measures of Central Tendency: mean, median, mode; Measures of Dispersion: Range, standard deviation, variance, etc. Correlation Coefficients, Frequency Tables* Source: Footnote Source
Exploring the Relationship between Two variables: Scatter Diagrams,
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Inferential Statistics
Drawing conclusions about a population based on information from a sample. Statistical Inference is the process of using information obtained from analyzing a sample to make estimates about characteristics of the entire population. It is a discipline that allows us to estimate unknown quantities by making some elementary measurements. Using these estimates we can then make Predictions and Forecast the Future Statistical Inference with Hypothesis Testing: null and alternative hypotheses, one-tailed vs. two-tailed tests, test statistics, p-value, statistical significance, decision rules The Concept of Risk and Power: risks involved, type I and II errors, confidence level and power of test Statistical Inference with Confidence Intervals: how it works, when to use it Equivalence of the Hypothesis Testing and the Confidence Interval Approaches Statistical Inference for a Single Sample or Group: Hypothesis Testing vs. * Footnote Confidence Interval ApproachSource: Source
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Gathering of Data
Classification, Summarization, and Processing of data
Presentation and Communication of Summarized information
Yes Is Information from a sample?
Yes
Use sample information to make inferences about the population
Statistical Inference
No Descripti ve Statistics Use cencus data to analyze the population characteristic under study
No
Draw conclusions about the population characteristic (parameter) under study
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Population & Sample
Population Sample
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Population & Sample
Population: The complete set of data elements is termed the population. It is a set of all items in a particular study Sample: A sample is a portion of a population selected for further analysis. It is the subset of population Parameter: A parameter is a characteristic of the whole population Statistic: A statistics is a characteristic of the sample, presumably a measurable Remember: Parameter is to Population as Statistic is to Sample
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Why Sample
Why Sample?
Less time consuming than a census Less costly to administer than a census More practical to administer than a census of the targeted population Case of Sampling Survey Opinion Polls
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Data
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Data are the facts and figures that are collected, summarized, analyzed, and interpreted. A collection of data is called data set and a single observation is called a data element Data can be further classified as being qualitative (Attribute) or quantitative (Variable). Variables: Weight, height etcTwo types.Continuous & Discrete Continuous Variable is the variable, which can take any value within the given interval . E.g. Weight.50.0, 50.2, 50.5, 51.0 etc Discrete variable is the variable which can take isolated values e.g. No of patients visiting a doctor e.g. 50, 51 etc Attribute: Honesty, Integrity etc* Source: Footnote Source 22
Data TypesUnit of measure
Data
Numerical(Quantitative)
Categorical(Qualitative)
Discrete
Continuous
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Primary DataUnit of measure
Data can be classified as Primary Data or Secondary Data Primary data are those which are collected for a specific purpose directly from the field and hence are original in nature. This is collected by or on behalf of the person or persons who are going to make the use of the data. Once the data have been collected, processed & published, it becomes the secondary data for the subsequent usage by different people for other application in different connection Methods for Primary Data Collection Direct Personal Interview Observations Indirect Oral Interviews Information from agents/correspondents Footnote Questionnaire Method Mailed *Source: Source 24
Secondary DataUnit of measure
Secondary data are such numerical information, which have been already collected by some agency for specific purpose and are subsequently compiled from that source for the application in different connections. There are many advantages of using secondary data It is inexpensive Large quantity of data available from wide range of sources The data may be available for many number of years, and hence we can understand trend and may forecast the futuristic information
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Data SourcesUnit of measure
PrimaryData Collection
SecondaryData Compilation
Print or Electronic Observation Survey
Experimentation* Source: Footnote Source 26
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Descriptive Statistics
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Data Processing Techniques
Raw Data Data Array Discrete Frequency Distribution Continuous Frequency Distribution
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Raw Data & Data Array
Raw Data: Information before it is arranged & analysed is raw data. It is called raw, as it is unprocessed by any statistical methods
ExampleData Array: It involves arranging the values in either ascending or descending order
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Numerical 1 Data Array14 39 14 26 42 18 2 45 30 34 30 33 8 32 24 13 24 34 27 24 30 37 30 10 9 20 22 12 23 14
Raw Data
Prepare data array. 2 20 30* Source:
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9 23 32
10 24 33
12 24 34
13 24 34
14 26 37
14 27 39
14 30 42
18 30 4530
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Discrete Distribution
In the discrete frequency distribution, after arranging the valuesin ascending order, we count the frequency i.e. number of times each value has appeared in the data set by using tally marks
Discrete distribution is also known as ungrouped FD. Numerical
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Numerical 2 - Discrete FDMarks 2 8 9 10 12 13 14 18 20 22*
Tally Marks
Frequency 1 1 1 1 1 1 3 1 1 1 1
Marks 24 26 27 30 32 33 34 37 39 42 45
Tally Marks
Fequency 3 1 1 4 1 1 2 1 1 1 132
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Continuous Frequency DistributionContinuous Frequency Distribution In this, all the values are classified in groups or classes, hencethis type of distribution is known as grouped or continuous frequency distribution
Class Limits Class Interval Class Frequency Class Mid Point or Class Mark
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Class LimitsClass Limits The two boundaries of the class are known as Class Limits. The Class Limits are the lowest and the highest value that can be included in the class. e.g. 10-20In this class, 10 is the lower limit and 20 is the upper limit The lower limit of the class is that value below which no observation can be included in the class. The upper limit of the class is that value above which no observation can be included in the class.
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Class IntervalClass Interval The difference between the upper limit and lower limkt of the class is known as class interval or class width of that class. e.g. Class 10-20 has the CI of 10. In case, for the classification, the number of classes are not given, then the number of classes can be determined using the Sturges formaula No of Classes (K) = 1 + 3.322 log N Where N is the total no of observations
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Class IntervalFormula for the Class Interval: Class Interval (i) = (Next unit value after the largest value in the data Smallest value in the data)/No of Classes e.g. If the marks of 30 students range between 10 & 40 and if we want to divide in 3 classes, then
Class Interval (i) = (41-10)/3 = 10.33 i.e. 11 The classes become 10-21, 21-32, 32-43.
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Cell NomenclatureCell interval (i)
CELL
Midpoint
UPPER BOUNDARY
CELL NOMENCLATURE
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Exclusive / Inclusive MethodThere are 2 methods of classifying the data according to class intervals. Exclusive Method: In this, the class intervals are so fixed that the upper limit of the class is the lower limit of the next class. In other words, in exclusive method, upper limits are excluded from that class. E.g. 10-20, 20-30, 30-40 etc. This is more suitable for continuous variable. Inclusive Method: In this type, the upper limits are included in the class. E.g. 10-19, 20-29, 30-39 etc. This is more suitable for discrete variable. Correction Factor = (Lower Limit of 2nd Class Upper Limit of 1st Class)/2*
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Correction FactorIn case of inclusive type, for getting the correct CI, we need to add the correction factor to upper limit of the classes and subtract the same from the lower limit of the classes. Correction Factor = (Lower Limit of 2nd Class Upper Limit of 1st Class)/2 e.g. 10-19 Class Correction factor = (19-10)/2 = 0.5 and hence the class becomes 9.5-19.5 and hence the CI becomes 10
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Inclusive to exclusiveInclusive Type 10-14 15-19 20-24 25-29 Exclusive type 9.5-14.5 14.5-19.5 19.5-24.5 24.5-19.5
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Constructing FDStep 1: Decide on the type (Inclusive / Exclusive) and number of classes for dividing the data by using Sturges formula. (If given in the numerical, then go to step 2 directly. Step 2: Sort the data into different classes and count the frequency Step 3: Illustrate the data in the chart
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Numerical 3 Continuous FDStep 1: Calculate the No of Classes (Sturges formula) No of Classes (K) = 1 + 3.322 log N = 1 + 3.322 log 30 = 1 + 3.322 (1.477) = 5.9 =6
Step 2: Sort the data points into classes and count the no of points in each class. We have K = 6 Now Class Interval width = (Next unit value after Largest value Smallest value)/K = (46-2)/6 = 44/6 = 7.33 i.e. approx 8. Hence the classes shall be 2-9, 10-17, 18-25, 26-33, 34-41, * Footnote 42-49.Source
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Numerical 3 Continuous FDClass 29 10 17 18 25 26 33 34 41 42 49 Tally Marks Frequency 3 6 7 8 4 2
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Numerical 4 Home AssignmentThe following set of the data represents the Km per litre of 40 similar motor cycles. 40.5, 39.7, 40.6, 39.9, 40.9, 38.9, 41.4, 40.5, 41.0, 38.8, 39.6, 40.4, 39.9, 40.2, 40.8, 40.7, 40.6, 41.7, 40.8, 39.1, 40.1, 40.7, 40.1, 40.7, 40.7, 39.8, 39.3, 39.6, 40.5, 41.3, 41.0, 39.9, 40.4, 40.9, 40.1, 41.2, 40.2, 40.0, 39.4, 40.6. Construct the frequency distribution to this data taking classes as 38.5-39.0, 39.0-39.5 etc
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Numerical 4 Home AssignmentClasses 38.5-39.0 39.0-39.5 39.5-40.0 40.0-40.5 40.5-41.0 41.0-41.5 41.5-42.0 Tally Marks Frequency 2 3 7 8 14 5 1
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