SlideShare a Scribd company logo
1 of 19
Methods of Data Collection
There are two types of data used for research work:
• Primary data: Collected first-hand by the researcher. Primary data can be
collected in a number of ways.
• Secondary data: Already collected by someone other than the researcher.
Quickly obtainable than primary data.
• Common sources are Government departments, organizational records and data
originally collected for other research purposes.
Collection of Primary Data
• Questionnaires: A questionnaire is a research
instrument consisting of a series
of questions.
• Questionnaires can be thought of as a kind of
written interview.
• Often a questionnaire uses both open and closed
questions to collect data.
• Observations: Watching behaviour of other
persons as it actually happens without controlling
it. Thus, recording information without asking
questions.
• Interviews: Interview involves two groups of
people, first is the interviewer (the researcher)
and second is the interviewee.
• Schedules: Questionnaires are sent through
enumerators to collect information.
• They directly meet informants with
questionnaire.
• It also includes methods like surveys or
experiments
Collection of Secondary Data
Secondary data is available in:
• Various publications of the central, state or local governments.
• Various publications by foreign governments or international bodies and
their subsidiary organisations.
• Technical and trade journals.
• Books, magazines and newspapers
• Reports and publications of various organisations connected with
business and industry, bank stock exchange etc..
• Reports prepared by research scholars, universities, economists etc. in
different fields.
• Public records and statistics, historical documents and other sources of
published information.
Sources of unpublished data are many and they include:
• Diaries and Letters
• Unpublished biographies and autobiographies
• Data available with research scholars and research
workers, trade associations, labour bureaus and
other public/private individuals and organisations.
Processing and analysis of data
After collection of data it has to be processed and analysed with following Process
of analysis:
1. Editing: Data editing is the process of reviewing data for consistency, detection
of errors and outliers (values that are extremely larger or smaller than rest of data)
and correction of errors, in order to improve quality, accuracy and adequacy of
data and make it suitable for the purpose for which it was collected.
2. Coding: coding is an analytical process of categorisation of data, in which both
quantitative form (such as questionnaires results) or qualitative form (such as
interview transcripts) are categorized to facilitate analysis. One purpose
of coding is to transform the data into a form suitable for computer-aided analysis.
3. Classification: Classification is a technique where we categorize data into a given
number of classes. The main goal of classification is to identify the category/class
to which a new data will fall under.
Types of Data Classification
• Content-based classification: Inspects and interprets files looking for sensitive
information.
• Context-based classification: Looks at application, location, or creator among
other variables as indirect indicators of sensitive information.
4. Tabulation
• A systematic & logical presentation of
data in rows and columns to facilitate
comparison and statistical analysis.
• In other words, the method of placing
organised data into a tabular form is
called as tabulation.
• Objectives are to make
complex data simple.
• When data are arranged systematically in
a table, they can be easily understood.
Elements/Types of Analysis
• Descriptive analysis: Used to describe basic features of data in the study.
• Provide simple summaries about the sample and the measures.
• With simple graphical analysis form the basic virtual of any
quantitative analysis.
• Correlation analysis: Method of statistical evaluation used to study the
strength of a relationship between two, numerically measured, continuous
variables (e.g. height and weight).
• Multivariate analysis: Based in observation and analysis of more than one
statistical outcome variable at a time.
• Multiple regression analysis
• Multiple discriminant analysis
• Multivariate analysis of variance (or Multi-ANOVA)
• Canonical analysis
• Inferential analysis: Allow to draw conclusions or inferences from data. Usually
this means coming to conclusions about a population on the basis of data
describing a sample.
Hypothesis Testing
Hypothesis means a mere assumption or some supposition to be proved or
disapproved
Characteristics of Hypothesis:
• It should be clear and precise
• Should be capable of being testing
• It should state the relationship between variables
• It should be limited by scope and be specific
• It should be stated as far as possible with most simple terms so that the same is
easily understandable by all concerned
• It should be consisted with most known facts
• It should be amenable to testing with in a reasonable time
• Must explain the facts that gave rise to the need for explanation
Types of Hypothesis
• Null hypothesis: Null hypothesis is a general statement which states that there is
no relationship between two phenomenon under consideration or that there is
no association between two groups.
• Alternative hypothesis: An alternative hypothesis is a statement which describes
that there is a relationship between two selected variables in a study. It is
contrary to the null hypothesis.
Testing of Hypothesis
Procedure of testing Hypothesis:
• Formulate a null or alternative Hypothesis
• Choose the level of significance of the test
• Choose the location of the critical region
• Choose the appropriate test statistics
• Compute from sample observations for observed value of chosen statistics using
relevant formula
• Compare sample value of chosen statistics with theoretical (table) value that
defines critical region
Methods of testing Hypothesis
• Parametric tests or standard tests of hypothesis
Relies upon the assumption that the testing data is normally distributed. If your
data does not have the appropriate properties then you use a non-parametric test.
The important parametric tests are:
• Z – Test: Statistical calculations that can be used to compare two different
population means when the variances are known and the sample size is large.
• T – Test: A t-test is a type of inferential statistic used to determine if there is a
significant difference between the means of two groups, which may be related in
certain features.
• X – Test: A chi-square (χ2) statistic is a test that measures how expectations
compare to actual observed data (or model results). The data used in calculating
a chi-square statistic must be random, raw, mutually exclusive, drawn from
independent variables, and drawn from a large enough sample.
• F – Test: An F-test is any statistical test in which the test statistic has anF-
distribution under null hypothesis.
Non-Parametric tests or distribution free test of hypothesis
A non-parametric test is a hypothesis test that does not make any assumptions
about the distribution of samples.
a) One sample and two sample tests:
• Binomial test
• Chi-square test
• McNemar test
b) K – sample tests (K > 3):
• Kruskal-Wallis test: H
• Friedman test
• Kendall’s coefficient of concordance: W
Interpretation
Interpretation of data means the task of
drawing conclusions and explaining their
significance after a careful analysis and
examination of data.
Interpretation also extends beyond the
data of study to inch the results of
other research, theory and hypotheses.
Techniques of Interpretation
Interpretation requires a great skill on part of the researcher. Its is an art that one
learns through practice and experience.
The techniques of interpretation often involves following steps:
• Researcher must give reasonable explanations of the relations which have been
found.
• Extraneous information, if collected during the study must be considered while
interpreting the final result.
• It is advisable before embarking upon final interpretation to consult someone
having insight into the study
• Researchers must accomplish the task of interpretation only after considering all
relevant factors affecting the problem.

More Related Content

What's hot

Sampling techniques
Sampling techniquesSampling techniques
Sampling techniquesBharat Paul
 
Data collection tools and techniques
Data collection tools and techniquesData collection tools and techniques
Data collection tools and techniquesAmandeepKaur571345
 
Questionnaire and its Types
Questionnaire and its Types Questionnaire and its Types
Questionnaire and its Types Mumbai University
 
Data editing ( In research methodology )
Data editing ( In research methodology )Data editing ( In research methodology )
Data editing ( In research methodology )Np Shakeel
 
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...Stats Statswork
 
SAMPLING AND SAMPLING ERRORS
SAMPLING AND SAMPLING ERRORSSAMPLING AND SAMPLING ERRORS
SAMPLING AND SAMPLING ERRORSrambhu21
 
METHOD OF DATA COLLECTION
METHOD OF DATA COLLECTIONMETHOD OF DATA COLLECTION
METHOD OF DATA COLLECTIONPK Joshua
 
Analysis of data in research
Analysis of data in researchAnalysis of data in research
Analysis of data in researchAbhijeet Birari
 
Research methodology
Research methodologyResearch methodology
Research methodologyMohit Chauhan
 
Sampling and Sample Types
Sampling  and Sample TypesSampling  and Sample Types
Sampling and Sample TypesDr. Sunil Kumar
 
Multistage random sampling
Multistage random samplingMultistage random sampling
Multistage random samplingUE
 
Research methodology
Research methodologyResearch methodology
Research methodologySonal Kale
 

What's hot (20)

Sampling techniques
Sampling techniquesSampling techniques
Sampling techniques
 
Non-Probability sampling
Non-Probability samplingNon-Probability sampling
Non-Probability sampling
 
Data collection tools and techniques
Data collection tools and techniquesData collection tools and techniques
Data collection tools and techniques
 
Research
ResearchResearch
Research
 
SAMPLING
SAMPLINGSAMPLING
SAMPLING
 
Questionnaire and its Types
Questionnaire and its Types Questionnaire and its Types
Questionnaire and its Types
 
SECONDARY DATA
SECONDARY DATASECONDARY DATA
SECONDARY DATA
 
Research problem
Research problem Research problem
Research problem
 
Data editing ( In research methodology )
Data editing ( In research methodology )Data editing ( In research methodology )
Data editing ( In research methodology )
 
Sampling and its types
Sampling and its typesSampling and its types
Sampling and its types
 
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...
Statistical Data Analysis | Data Analysis | Statistics Services | Data Collec...
 
SAMPLING AND SAMPLING ERRORS
SAMPLING AND SAMPLING ERRORSSAMPLING AND SAMPLING ERRORS
SAMPLING AND SAMPLING ERRORS
 
METHOD OF DATA COLLECTION
METHOD OF DATA COLLECTIONMETHOD OF DATA COLLECTION
METHOD OF DATA COLLECTION
 
Data collection techniques
Data collection techniquesData collection techniques
Data collection techniques
 
Introduction to Descriptive Statistics
Introduction to Descriptive StatisticsIntroduction to Descriptive Statistics
Introduction to Descriptive Statistics
 
Analysis of data in research
Analysis of data in researchAnalysis of data in research
Analysis of data in research
 
Research methodology
Research methodologyResearch methodology
Research methodology
 
Sampling and Sample Types
Sampling  and Sample TypesSampling  and Sample Types
Sampling and Sample Types
 
Multistage random sampling
Multistage random samplingMultistage random sampling
Multistage random sampling
 
Research methodology
Research methodologyResearch methodology
Research methodology
 

Similar to Methods of data collection

Quantitative Research
Quantitative ResearchQuantitative Research
Quantitative Researchsyerencs
 
Research and Data Analysi-1.pptx
Research and Data Analysi-1.pptxResearch and Data Analysi-1.pptx
Research and Data Analysi-1.pptxMaryamManzoor25
 
Introduction to Data Management in Human Ecology
Introduction to Data Management in Human EcologyIntroduction to Data Management in Human Ecology
Introduction to Data Management in Human EcologyKern Rocke
 
Research Methodology
Research MethodologyResearch Methodology
Research Methodologysh_neha252
 
Data Analysis & Interpretation and Report Writing
Data Analysis & Interpretation and Report WritingData Analysis & Interpretation and Report Writing
Data Analysis & Interpretation and Report WritingSOMASUNDARAM T
 
Chapter 6.pptx Data Analysis and processing
Chapter 6.pptx Data Analysis and processingChapter 6.pptx Data Analysis and processing
Chapter 6.pptx Data Analysis and processingetebarkhmichale
 
Advanced Research Methodology Session-4.pptx
Advanced Research Methodology Session-4.pptxAdvanced Research Methodology Session-4.pptx
Advanced Research Methodology Session-4.pptxHarariMki1
 
IDS-Unit-II. bachelor of computer applicatio notes
IDS-Unit-II. bachelor of computer applicatio notesIDS-Unit-II. bachelor of computer applicatio notes
IDS-Unit-II. bachelor of computer applicatio notesAnkurTiwari813070
 
Chapter 11 Data Analysis Classification and Tabulation
Chapter 11 Data Analysis Classification and TabulationChapter 11 Data Analysis Classification and Tabulation
Chapter 11 Data Analysis Classification and TabulationInternational advisers
 
Analysing qualitative data from information organizations
Analysing qualitative data from information organizationsAnalysing qualitative data from information organizations
Analysing qualitative data from information organizationsAleeza Ahmad
 
Nursing Data Analysis.pptx
Nursing Data Analysis.pptxNursing Data Analysis.pptx
Nursing Data Analysis.pptxChinna Chadayan
 
steps in geographical research.pptx
steps in geographical research.pptxsteps in geographical research.pptx
steps in geographical research.pptxAsim Pt
 
Chapter-one.pptx
Chapter-one.pptxChapter-one.pptx
Chapter-one.pptxAbebeNega
 

Similar to Methods of data collection (20)

ANALYSIS OF DATA.pptx
ANALYSIS OF DATA.pptxANALYSIS OF DATA.pptx
ANALYSIS OF DATA.pptx
 
Quantitative Research
Quantitative ResearchQuantitative Research
Quantitative Research
 
Research and Data Analysi-1.pptx
Research and Data Analysi-1.pptxResearch and Data Analysi-1.pptx
Research and Data Analysi-1.pptx
 
lecture-8.pdf
lecture-8.pdflecture-8.pdf
lecture-8.pdf
 
Ressearch design - Copy.ppt
Ressearch design - Copy.pptRessearch design - Copy.ppt
Ressearch design - Copy.ppt
 
Chapter 7 Knowing Our Data
Chapter 7 Knowing Our DataChapter 7 Knowing Our Data
Chapter 7 Knowing Our Data
 
Introduction to Data Management in Human Ecology
Introduction to Data Management in Human EcologyIntroduction to Data Management in Human Ecology
Introduction to Data Management in Human Ecology
 
Research Methodology
Research MethodologyResearch Methodology
Research Methodology
 
2. Analysis of Data.pptx
2. Analysis of Data.pptx2. Analysis of Data.pptx
2. Analysis of Data.pptx
 
Data Analysis & Interpretation and Report Writing
Data Analysis & Interpretation and Report WritingData Analysis & Interpretation and Report Writing
Data Analysis & Interpretation and Report Writing
 
Chapter 6.pptx Data Analysis and processing
Chapter 6.pptx Data Analysis and processingChapter 6.pptx Data Analysis and processing
Chapter 6.pptx Data Analysis and processing
 
Advanced Research Methodology Session-4.pptx
Advanced Research Methodology Session-4.pptxAdvanced Research Methodology Session-4.pptx
Advanced Research Methodology Session-4.pptx
 
IDS-Unit-II. bachelor of computer applicatio notes
IDS-Unit-II. bachelor of computer applicatio notesIDS-Unit-II. bachelor of computer applicatio notes
IDS-Unit-II. bachelor of computer applicatio notes
 
Chapter 11 Data Analysis Classification and Tabulation
Chapter 11 Data Analysis Classification and TabulationChapter 11 Data Analysis Classification and Tabulation
Chapter 11 Data Analysis Classification and Tabulation
 
Biostatistics ppt
Biostatistics  pptBiostatistics  ppt
Biostatistics ppt
 
Analysing qualitative data from information organizations
Analysing qualitative data from information organizationsAnalysing qualitative data from information organizations
Analysing qualitative data from information organizations
 
Nursing Data Analysis.pptx
Nursing Data Analysis.pptxNursing Data Analysis.pptx
Nursing Data Analysis.pptx
 
Statistics.pptx
Statistics.pptxStatistics.pptx
Statistics.pptx
 
steps in geographical research.pptx
steps in geographical research.pptxsteps in geographical research.pptx
steps in geographical research.pptx
 
Chapter-one.pptx
Chapter-one.pptxChapter-one.pptx
Chapter-one.pptx
 

More from YogeshSorot

Types of service
Types of serviceTypes of service
Types of serviceYogeshSorot
 
Uniform & uniform room
Uniform & uniform roomUniform & uniform room
Uniform & uniform roomYogeshSorot
 
Computer Operating system
Computer Operating systemComputer Operating system
Computer Operating systemYogeshSorot
 
Software languages and devices
Software languages and devicesSoftware languages and devices
Software languages and devicesYogeshSorot
 
Generations of Computer
Generations of ComputerGenerations of Computer
Generations of ComputerYogeshSorot
 
Computer fundamentals
Computer fundamentalsComputer fundamentals
Computer fundamentalsYogeshSorot
 
Beverage control
Beverage controlBeverage control
Beverage controlYogeshSorot
 
Menu merchandising
Menu merchandisingMenu merchandising
Menu merchandisingYogeshSorot
 
Inventory control
Inventory controlInventory control
Inventory controlYogeshSorot
 
Sales concepts & sales control
Sales concepts & sales controlSales concepts & sales control
Sales concepts & sales controlYogeshSorot
 
Cost dynamics & budgetary control
Cost dynamics & budgetary controlCost dynamics & budgetary control
Cost dynamics & budgetary controlYogeshSorot
 
Introduction to research methodology
Introduction to research methodologyIntroduction to research methodology
Introduction to research methodologyYogeshSorot
 
Introduction to hotel & catering industry
Introduction to hotel & catering industryIntroduction to hotel & catering industry
Introduction to hotel & catering industryYogeshSorot
 
Introduction to hospitality industry
Introduction to hospitality industryIntroduction to hospitality industry
Introduction to hospitality industryYogeshSorot
 
Research process
Research processResearch process
Research processYogeshSorot
 
Welfare catering
Welfare cateringWelfare catering
Welfare cateringYogeshSorot
 
Indian hospitality industry
Indian hospitality industryIndian hospitality industry
Indian hospitality industryYogeshSorot
 

More from YogeshSorot (20)

Armagnac
ArmagnacArmagnac
Armagnac
 
Types of service
Types of serviceTypes of service
Types of service
 
Uniform & uniform room
Uniform & uniform roomUniform & uniform room
Uniform & uniform room
 
Computer Operating system
Computer Operating systemComputer Operating system
Computer Operating system
 
Software languages and devices
Software languages and devicesSoftware languages and devices
Software languages and devices
 
Generations of Computer
Generations of ComputerGenerations of Computer
Generations of Computer
 
Computer fundamentals
Computer fundamentalsComputer fundamentals
Computer fundamentals
 
Beverage control
Beverage controlBeverage control
Beverage control
 
Menu merchandising
Menu merchandisingMenu merchandising
Menu merchandising
 
Inventory control
Inventory controlInventory control
Inventory control
 
Sales concepts & sales control
Sales concepts & sales controlSales concepts & sales control
Sales concepts & sales control
 
Cost dynamics & budgetary control
Cost dynamics & budgetary controlCost dynamics & budgetary control
Cost dynamics & budgetary control
 
Sample design
Sample designSample design
Sample design
 
Introduction to research methodology
Introduction to research methodologyIntroduction to research methodology
Introduction to research methodology
 
Introduction to hotel & catering industry
Introduction to hotel & catering industryIntroduction to hotel & catering industry
Introduction to hotel & catering industry
 
Introduction to hospitality industry
Introduction to hospitality industryIntroduction to hospitality industry
Introduction to hospitality industry
 
Report writing
Report writingReport writing
Report writing
 
Research process
Research processResearch process
Research process
 
Welfare catering
Welfare cateringWelfare catering
Welfare catering
 
Indian hospitality industry
Indian hospitality industryIndian hospitality industry
Indian hospitality industry
 

Recently uploaded

Judging the Relevance and worth of ideas part 2.pptx
Judging the Relevance  and worth of ideas part 2.pptxJudging the Relevance  and worth of ideas part 2.pptx
Judging the Relevance and worth of ideas part 2.pptxSherlyMaeNeri
 
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
Keynote by Prof. Wurzer at Nordex about IP-design
Keynote by Prof. Wurzer at Nordex about IP-designKeynote by Prof. Wurzer at Nordex about IP-design
Keynote by Prof. Wurzer at Nordex about IP-designMIPLM
 
Grade 9 Q4-MELC1-Active and Passive Voice.pptx
Grade 9 Q4-MELC1-Active and Passive Voice.pptxGrade 9 Q4-MELC1-Active and Passive Voice.pptx
Grade 9 Q4-MELC1-Active and Passive Voice.pptxChelloAnnAsuncion2
 
Gas measurement O2,Co2,& ph) 04/2024.pptx
Gas measurement O2,Co2,& ph) 04/2024.pptxGas measurement O2,Co2,& ph) 04/2024.pptx
Gas measurement O2,Co2,& ph) 04/2024.pptxDr.Ibrahim Hassaan
 
Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17Celine George
 
How to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERPHow to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERPCeline George
 
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...Nguyen Thanh Tu Collection
 
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxMULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxAnupkumar Sharma
 
Roles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in PharmacovigilanceRoles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in PharmacovigilanceSamikshaHamane
 
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfAMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfphamnguyenenglishnb
 
Choosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for ParentsChoosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for Parentsnavabharathschool99
 
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTiammrhaywood
 
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptx
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptxINTRODUCTION TO CATHOLIC CHRISTOLOGY.pptx
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptxHumphrey A Beña
 
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17Celine George
 
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxiammrhaywood
 
DATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginnersDATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginnersSabitha Banu
 
ACC 2024 Chronicles. Cardiology. Exam.pdf
ACC 2024 Chronicles. Cardiology. Exam.pdfACC 2024 Chronicles. Cardiology. Exam.pdf
ACC 2024 Chronicles. Cardiology. Exam.pdfSpandanaRallapalli
 
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxBarangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxCarlos105
 
Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17Celine George
 

Recently uploaded (20)

Judging the Relevance and worth of ideas part 2.pptx
Judging the Relevance  and worth of ideas part 2.pptxJudging the Relevance  and worth of ideas part 2.pptx
Judging the Relevance and worth of ideas part 2.pptx
 
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
 
Keynote by Prof. Wurzer at Nordex about IP-design
Keynote by Prof. Wurzer at Nordex about IP-designKeynote by Prof. Wurzer at Nordex about IP-design
Keynote by Prof. Wurzer at Nordex about IP-design
 
Grade 9 Q4-MELC1-Active and Passive Voice.pptx
Grade 9 Q4-MELC1-Active and Passive Voice.pptxGrade 9 Q4-MELC1-Active and Passive Voice.pptx
Grade 9 Q4-MELC1-Active and Passive Voice.pptx
 
Gas measurement O2,Co2,& ph) 04/2024.pptx
Gas measurement O2,Co2,& ph) 04/2024.pptxGas measurement O2,Co2,& ph) 04/2024.pptx
Gas measurement O2,Co2,& ph) 04/2024.pptx
 
Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17Difference Between Search & Browse Methods in Odoo 17
Difference Between Search & Browse Methods in Odoo 17
 
How to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERPHow to do quick user assign in kanban in Odoo 17 ERP
How to do quick user assign in kanban in Odoo 17 ERP
 
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
HỌC TỐT TIẾNG ANH 11 THEO CHƯƠNG TRÌNH GLOBAL SUCCESS ĐÁP ÁN CHI TIẾT - CẢ NĂ...
 
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptxMULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
MULTIDISCIPLINRY NATURE OF THE ENVIRONMENTAL STUDIES.pptx
 
Roles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in PharmacovigilanceRoles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in Pharmacovigilance
 
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdfAMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
AMERICAN LANGUAGE HUB_Level2_Student'sBook_Answerkey.pdf
 
Choosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for ParentsChoosing the Right CBSE School A Comprehensive Guide for Parents
Choosing the Right CBSE School A Comprehensive Guide for Parents
 
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPTECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
ECONOMIC CONTEXT - LONG FORM TV DRAMA - PPT
 
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptx
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptxINTRODUCTION TO CATHOLIC CHRISTOLOGY.pptx
INTRODUCTION TO CATHOLIC CHRISTOLOGY.pptx
 
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
Incoming and Outgoing Shipments in 3 STEPS Using Odoo 17
 
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptxECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
ECONOMIC CONTEXT - PAPER 1 Q3: NEWSPAPERS.pptx
 
DATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginnersDATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginners
 
ACC 2024 Chronicles. Cardiology. Exam.pdf
ACC 2024 Chronicles. Cardiology. Exam.pdfACC 2024 Chronicles. Cardiology. Exam.pdf
ACC 2024 Chronicles. Cardiology. Exam.pdf
 
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptxBarangay Council for the Protection of Children (BCPC) Orientation.pptx
Barangay Council for the Protection of Children (BCPC) Orientation.pptx
 
Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17Field Attribute Index Feature in Odoo 17
Field Attribute Index Feature in Odoo 17
 

Methods of data collection

  • 1.
  • 2. Methods of Data Collection There are two types of data used for research work: • Primary data: Collected first-hand by the researcher. Primary data can be collected in a number of ways. • Secondary data: Already collected by someone other than the researcher. Quickly obtainable than primary data. • Common sources are Government departments, organizational records and data originally collected for other research purposes.
  • 3. Collection of Primary Data • Questionnaires: A questionnaire is a research instrument consisting of a series of questions. • Questionnaires can be thought of as a kind of written interview. • Often a questionnaire uses both open and closed questions to collect data. • Observations: Watching behaviour of other persons as it actually happens without controlling it. Thus, recording information without asking questions.
  • 4. • Interviews: Interview involves two groups of people, first is the interviewer (the researcher) and second is the interviewee. • Schedules: Questionnaires are sent through enumerators to collect information. • They directly meet informants with questionnaire. • It also includes methods like surveys or experiments
  • 5. Collection of Secondary Data Secondary data is available in: • Various publications of the central, state or local governments. • Various publications by foreign governments or international bodies and their subsidiary organisations. • Technical and trade journals. • Books, magazines and newspapers • Reports and publications of various organisations connected with business and industry, bank stock exchange etc.. • Reports prepared by research scholars, universities, economists etc. in different fields. • Public records and statistics, historical documents and other sources of published information.
  • 6. Sources of unpublished data are many and they include: • Diaries and Letters • Unpublished biographies and autobiographies • Data available with research scholars and research workers, trade associations, labour bureaus and other public/private individuals and organisations.
  • 7. Processing and analysis of data After collection of data it has to be processed and analysed with following Process of analysis: 1. Editing: Data editing is the process of reviewing data for consistency, detection of errors and outliers (values that are extremely larger or smaller than rest of data) and correction of errors, in order to improve quality, accuracy and adequacy of data and make it suitable for the purpose for which it was collected. 2. Coding: coding is an analytical process of categorisation of data, in which both quantitative form (such as questionnaires results) or qualitative form (such as interview transcripts) are categorized to facilitate analysis. One purpose of coding is to transform the data into a form suitable for computer-aided analysis.
  • 8. 3. Classification: Classification is a technique where we categorize data into a given number of classes. The main goal of classification is to identify the category/class to which a new data will fall under. Types of Data Classification • Content-based classification: Inspects and interprets files looking for sensitive information. • Context-based classification: Looks at application, location, or creator among other variables as indirect indicators of sensitive information.
  • 9. 4. Tabulation • A systematic & logical presentation of data in rows and columns to facilitate comparison and statistical analysis. • In other words, the method of placing organised data into a tabular form is called as tabulation. • Objectives are to make complex data simple. • When data are arranged systematically in a table, they can be easily understood.
  • 10. Elements/Types of Analysis • Descriptive analysis: Used to describe basic features of data in the study. • Provide simple summaries about the sample and the measures. • With simple graphical analysis form the basic virtual of any quantitative analysis. • Correlation analysis: Method of statistical evaluation used to study the strength of a relationship between two, numerically measured, continuous variables (e.g. height and weight).
  • 11. • Multivariate analysis: Based in observation and analysis of more than one statistical outcome variable at a time. • Multiple regression analysis • Multiple discriminant analysis • Multivariate analysis of variance (or Multi-ANOVA) • Canonical analysis • Inferential analysis: Allow to draw conclusions or inferences from data. Usually this means coming to conclusions about a population on the basis of data describing a sample.
  • 12. Hypothesis Testing Hypothesis means a mere assumption or some supposition to be proved or disapproved Characteristics of Hypothesis: • It should be clear and precise • Should be capable of being testing • It should state the relationship between variables • It should be limited by scope and be specific • It should be stated as far as possible with most simple terms so that the same is easily understandable by all concerned • It should be consisted with most known facts • It should be amenable to testing with in a reasonable time • Must explain the facts that gave rise to the need for explanation
  • 13. Types of Hypothesis • Null hypothesis: Null hypothesis is a general statement which states that there is no relationship between two phenomenon under consideration or that there is no association between two groups. • Alternative hypothesis: An alternative hypothesis is a statement which describes that there is a relationship between two selected variables in a study. It is contrary to the null hypothesis.
  • 14. Testing of Hypothesis Procedure of testing Hypothesis: • Formulate a null or alternative Hypothesis • Choose the level of significance of the test • Choose the location of the critical region • Choose the appropriate test statistics • Compute from sample observations for observed value of chosen statistics using relevant formula • Compare sample value of chosen statistics with theoretical (table) value that defines critical region
  • 15. Methods of testing Hypothesis • Parametric tests or standard tests of hypothesis Relies upon the assumption that the testing data is normally distributed. If your data does not have the appropriate properties then you use a non-parametric test. The important parametric tests are: • Z – Test: Statistical calculations that can be used to compare two different population means when the variances are known and the sample size is large.
  • 16. • T – Test: A t-test is a type of inferential statistic used to determine if there is a significant difference between the means of two groups, which may be related in certain features. • X – Test: A chi-square (χ2) statistic is a test that measures how expectations compare to actual observed data (or model results). The data used in calculating a chi-square statistic must be random, raw, mutually exclusive, drawn from independent variables, and drawn from a large enough sample. • F – Test: An F-test is any statistical test in which the test statistic has anF- distribution under null hypothesis.
  • 17. Non-Parametric tests or distribution free test of hypothesis A non-parametric test is a hypothesis test that does not make any assumptions about the distribution of samples. a) One sample and two sample tests: • Binomial test • Chi-square test • McNemar test b) K – sample tests (K > 3): • Kruskal-Wallis test: H • Friedman test • Kendall’s coefficient of concordance: W
  • 18. Interpretation Interpretation of data means the task of drawing conclusions and explaining their significance after a careful analysis and examination of data. Interpretation also extends beyond the data of study to inch the results of other research, theory and hypotheses.
  • 19. Techniques of Interpretation Interpretation requires a great skill on part of the researcher. Its is an art that one learns through practice and experience. The techniques of interpretation often involves following steps: • Researcher must give reasonable explanations of the relations which have been found. • Extraneous information, if collected during the study must be considered while interpreting the final result. • It is advisable before embarking upon final interpretation to consult someone having insight into the study • Researchers must accomplish the task of interpretation only after considering all relevant factors affecting the problem.