The uploaded PDF focuses on the Economics topic Collection of Data, presented through a large set of carefully framed questions and answers. It explains what data is, why data is collected, and how economists and researchers gather information for analysis. The PDF gives detailed coverage of primary and secondary data, census and sample methods, sampling techniques, sources of data, and common errors in data collection. Overall, it works as a concept-heavy revision guide for students studying statistics and economics. Collection Of Data Ans
I am writing about this topic because data collection is the foundation of statistics, economics, and research, yet many students treat it as a mug-up chapter. This PDF makes it clear that choosing the right method of collecting data directly affects accuracy, cost, and reliability. Whether you are preparing for school exams, competitive tests, or simply trying to understand how surveys and censuses work in real life, knowing these concepts is essential.
What Is Meant by Collection of Data
Collection of data refers to the process of gathering numerical and factual information for a specific purpose. According to the PDF, data is meaningful numerical information that helps in analysis, comparison, and decision-making. Data must be collected carefully and systematically, because wrong or biased data can lead to incorrect conclusions.
The main purpose of collecting data is to provide evidence so that a clear and logical solution to a problem can be reached.
Types of Data Explained in the PDF
The PDF clearly divides data into two main types:
Primary Data
Primary data is the data collected for the first time by the investigator for a specific study. It is original in nature and considered more reliable and accurate.
Examples of primary data collection mentioned in the PDF include:
- Direct personal interviews
- Telephone interviews
- Observation method
- Questionnaires and schedules
- Information from local correspondents
Secondary Data
Secondary data refers to data that has already been collected and used by someone else. It is second-hand information and must be checked for reliability, suitability, and adequacy before use.
Common sources of secondary data discussed in the PDF include:
- Census reports
- Government publications
- Newspapers and journals
- Reports from organisations like NSSO and CSO
Census Method of Data Collection
The census method involves collecting data from each and every unit of the population. This method gives highly accurate and reliable results because no unit is left out.
However, the PDF also highlights that the census method:
- Is costly
- Is time-consuming
- Is not suitable for very large or infinite populations
The Census of India, conducted every ten years, is a major example explained in the PDF.
Download this Collection Of Data PDF File: Click Here
Sample Method of Data Collection
Under the sample method, data is collected from only a small representative part of the population. The results are then generalised for the whole population.
The PDF explains that sampling is preferred when:
- The population is very large or infinite
- Time and money are limited
- Quick results are required
Although sampling saves resources, it is subject to sampling errors.
Sampling Techniques Covered in the PDF
The PDF gives strong emphasis to different sampling methods:
- Simple random sampling
- Stratified sampling
- Systematic sampling
- Purposive and quota sampling
Simple random sampling is described as the scientific basis of sampling because each unit has an equal chance of selection. Stratified sampling is preferred when the population is non-homogeneous.
Methods of Collecting Primary Data
Several methods of primary data collection are explained through questions and examples:
- Direct personal investigation
- Indirect oral investigation
- Telephonic survey
- Mailed questionnaire method
- Schedule filled by enumerators
The PDF points out that mailed questionnaires cover the widest area, while telephone interviews are the quickest method.
Errors in Data Collection
The PDF clearly distinguishes between two types of errors:
- Sampling errors, which arise due to studying only a sample
- Non-sampling errors, caused by bias, faulty methods, or non-response
It stresses that biased selection and poor questionnaire design can seriously affect results.
Importance of Enumerators and Questionnaires
Enumerators play a key role in collecting data, especially in large surveys. A good questionnaire, as explained in the PDF, should be concise, clear, logical, and free from personal questions to ensure reliable responses.
Why This PDF Is Useful for Students
This PDF is extremely useful because it:
- Covers concepts through exam-oriented questions
- Explains definitions in simple language
- Reinforces learning through repetition
- Connects theory with real-world examples like census and surveys
It works well as a last-minute revision tool.


















