Easy Peasy
Estimators
Important Theorems
Confidence Interval
Hypothesis Testing
100

What is iid?

Independently and identically distributed (same probability for each)

100

Define point estimation

Process of estimating unknown parameters of a population using sample data; different samples lead to different values of p hat (estimator is a random variable)

100

Continuous Mapping Theorem

if xn → x then g(xn) → g(x).

100

Define confidence interval 

Method that uses a range to estimate unknown parameter theta 

100

Define hypothesis testing

Method used to make decisions about the population based on sample data

200

What are three methods of statistical inference?

point estimation, confidence interval, hypothesis testing
200

What are the steps to MLE?

1. Write down log-likelihood l(theta) = log L(theta)

2. Take derivative of l(theta) and equal it to 0

3. Solve for theta hat

4. Check its max using 2nd derivative (should be negative)

200

Theorem that shows that Xn converges in probability to mu

Law of Large Numbers

200
What are the three methods of constructing CIs?

Pivotal quantities, bootstrap, CLT

200

Name the two hypotheses

Null hypothesis (H0) and Alternative Hypothesis (Ha or H1)

300

What are 3 general approaches to construct estimators? 

MLE, MOM, and Bayes

300

How does MOM work?

It matches population moments to sample moments from data 

300

Central Limit Theorem

standardized sample mean converges in distribution to a standard Normal as the sample size increases

300
Define convergence in distribution

concept that describes how a sequence of rvs behaves as the sample size increases (sequence of distributions getting closer to another distribution as n goes to infinity)

300

What does "reject H0" and "fail to reject H0" mean?

Reject H0: data is unlikely under the null (enough evidence to support H1)

Fail to Reject H0: Data is not unlikely under the null; insufficient evidence to conclude H0 isn't true

400

The lower the bias, the ____ the variance

higher

400

What is the kernel trick?

It recognizes distributions based on their form without needing to compute constants 

400

Interpret what a 95% CI means

If we independently repeat the process of sampling n observations, approximately 95% of the times the random CI will include the true theta value.

400

Which error is this? You reject the null hypothesis when it's actually true.

Type I Error 

500

Define convergence in probability.

As we take more samples (increase in n) from a random process, the values will be more and more likely to the true value.

Xn -> (p) z* as n -> infinity

500

What is the Bayes Rule for random variables?

[f(y|z) * f(z)] / f(y)
500

What are the 3 sampling distributions and what are they used to do?

Chi squared, t, and F; used to construct CIs and hypothesis tests
500

Which test to use for a mean of a normal distribution with unknown variance?

1 sample t-test (two-sided)

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