Loss of Information in Classification
The inherent shortcoming of classifying data as a frequency distribution — where the details of raw data are lost — is called:
- Sampling error
- Non-sampling error
- Loss of information — Correct Answer
- Frequency bias
Explanation:
Correct Answer Explanation
The inherent shortcoming of a frequency distribution where details of raw data are not available is called Loss of Information.
Key Points:
- While classification summarises raw data making it concise and comprehensible, it does not show individual observation details.
- Once data is grouped, only the class frequency is available, not the actual values within the class.
- Example: Class 20–30 shows frequency = 6, but we cannot tell that the actual values were 25, 25, 20, 22, 25, 28.
- Further statistical calculations are based on class mark (25), not individual values — this causes loss of precision.
📚 About this Topic — CH-3: Organisation of Data
This multiple choice question is from CH-3: Organisation of Data, NCERT Books, Statistics for Economics. It has 4 options with a detailed explanation of the correct answer. Practice more MCQs from CH-3: Organisation of Data to strengthen your preparation.