Topics & Key Formulas
Three topics examined across MCQs and short-answer questions. Memorise the formulas below — they are directly tested every year.
Class 12 Applied Maths Unit 5 — Inferential Statistics Study Material
Unit 5 carries 5 marks in the CBSE Class 12 Applied Mathematics board exam. This page covers all three topics: Point Estimation, Confidence Intervals, and One-Sample t-Test.
You'll find 14 interactive MCQs and Assertion-Reason questions with complete explanations, plus 12 short-answer solved examples — all aligned to CBSE 2026-27.
1. Point Estimation
Estimate unknown population parameters — mean and standard deviation — directly from sample data.
Sample mean = point estimate of μ
Sample SD = point estimate of σ
2. Confidence Intervals
Build a range estimate for the population mean at a specified confidence level (95% or 99%).
95%: Z = 1.96 | 99%: Z = 2.576
3. One-Sample t-Test
Test hypotheses about a population mean when σ is unknown, using t-distribution with ν = n − 1 degrees of freedom.
Reject H₀ if |t_calc| > t_critical
Practice MCQs & Assertion-Reason — Unit 5
Select your answer, then click Show Answer to check and reveal the full explanation.
A statistic is already computed directly from the sample — it is already known. So estimating a statistic is not part of inferential statistics.
Key distinction: Parameter (population, unknown) vs Statistic (sample, known).
Statement II: The population mean is a statistic.
Which of the following is true?
Statement II — FALSE: Population mean \(\mu\) is a parameter (describes the whole population), not a statistic. Statistics describe samples.
Both statements are false → answer is Neither I nor II.
The denominator \(s/\sqrt{n}\) is the standard error of the mean. Note \(\sqrt{n}\) in the denominator — not \(n\) or \(n^2\).
Given \(n = 2026\): \(\nu = 2026 - 1 = \mathbf{2025}\)
Why n − 1? We lose one degree of freedom because we estimate \(\mu\) using \(\bar{x}\) when computing the sample standard deviation \(s\).
We either reject \(H_0\) (evidence is strong enough) or fail to reject \(H_0\) (evidence is insufficient), based on comparing the test statistic to the critical value.
Sample = the handful taken for inspection → this is the answer.
The wholesaler uses information from the sample to make inferences about the quality of the entire sack (the population).
Step 2 — Squared deviations:
\((1-4)^2 = 9,\quad (3-4)^2 = 1,\quad (5-4)^2 = 1,\quad (7-4)^2 = 9\)
Step 3 — Population variance (divide by N, not N−1):
\(\sigma^2 = \dfrac{9+1+1+9}{4} = \dfrac{20}{4} = \mathbf{5}\)
Key: For a population divide by \(N\). For a sample divide by \(n-1\).
The standard error \(\dfrac{\sigma}{\sqrt{n}}\) also decreases as \(n\) increases, so the sampling distribution of \(\bar{x}\) concentrates around \(\mu\), meaning \(|\bar{x} - \mu|\) decreases.
Step 2 — Squared deviations:
\((2-5)^2 = 9,\; (4-5)^2 = 1,\; (6-5)^2 = 1,\; (7-5)^2 = 4,\; (6-5)^2 = 1\)
Sum \(= 16\)
Step 3 — Sample SD (divide by n−1 = 4):
\(s = \sqrt{\dfrac{16}{4}} = \sqrt{4} = \mathbf{2}\)
Calculated \(|t| = 3.07\); Critical value \(= t_{25}(0.05) = 2.06\)
Since \(3.07 > 2.06\), we reject \(H_0\) (assumed standard/equal quality).
The positive t-value indicates the sample mean exceeds the standard → Superior quality.
This is why large-sample inference uses the standard normal (z) distribution — the CLT guarantees approximate normality.
📋 Assertion-Reason Questions (Q13–Q14)
- (a) Both A and R are True and R is the correct explanation of A
- (b) Both A and R are True but R is not the correct explanation of A
- (c) A is True but R is False
- (d) A is False but R is True
Reason (R): Sample standard deviation of \(n\) observations: \(s = \sqrt{\dfrac{\sum(x_i - \bar{x})^2}{n}}\)
\(\bar{x} = \dfrac{2+4+6+8+10}{5} = 6\)
\(\sum(x_i-\bar{x})^2 = 16+4+0+4+16 = 40\)
\(s = \sqrt{\dfrac{40}{5-1}} = \sqrt{10}\) → A is TRUE ✓
Checking R:
R uses \(n\) in the denominator — this is the population standard deviation formula. The correct sample SD formula divides by \((n-1)\), not \(n\) → R is FALSE ✗
Answer: (c) A is True but R is False.
Reason (R): The population standard deviation is unknown and the sample size is small.
R is TRUE and explains A: We use the t-distribution (not z) precisely because \(\sigma\) is unknown and we estimate it using \(s\), especially when \(n\) is small. Both conditions in R — unknown \(\sigma\) and small \(n\) — are the exact reasons we choose a t-test over a z-test.
Answer: (a) Both true; R correctly explains A.
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Short Answer — Complete Solutions
Step-by-step worked solutions. Click Show Solution to reveal each answer.
\((5-9)^2=16,\;(8-9)^2=1,\;(10-9)^2=1,\;(7-9)^2=4,\;(10-9)^2=1,\;(14-9)^2=25\)
Sum \(= 48\)
[Use \(t_9(0.05) = 2.262\); \(t_9(0.01) = 3.250\)]
(ii) 99% CI: (4.830, 6.370) ft
Note: the 99% interval is wider — more confidence requires a wider range.
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Exam Tips — Unit 5
How to score full marks in Unit 5 — mistakes to avoid and strategies that work.
Always use \(n-1\) in the denominator when computing sample standard deviation. The most common board exam mistake is dividing by \(n\) instead of \((n-1)\) when computing \(s\). We lose one degree of freedom because we estimate \(\mu\) using \(\bar{x}\). This applies for both point estimation questions and t-test calculations. Writing \(n\) in the denominator (the population formula) in a sample context will cost marks.
🔒 More exam tips — identifying the test tail before the critical value, how to write conclusions for full method marks, the most common t-table lookup errors, and how to present confidence interval working — are all in the AI Question Bank. All 8 units covered.
🤖 Get All Tips in AI Q-Bank →Frequently Asked Questions
Answers to questions students frequently ask about Class 12 Applied Maths Unit 5.
Use a z-test when \(\sigma\) is known or when \(n\) is large enough that the CLT applies.
A Type II error (\(\beta\)) occurs when we fail to reject a false null hypothesis — a false negative.
A one-tailed test is used when \(H_1: \mu > \mu_0\) (right-tailed) or \(H_1: \mu < \mu_0\) (left-tailed).
Always identify the direction of \(H_1\) first, then choose the correct critical value from the t-table.
Explore All 8 Units
Free study material for every unit of the CBSE Class 12 Applied Maths syllabus.
