CS109
  • Lectures
    • Week 1
    • 1 - Counting
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 2 - Permutations and Combinations
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 3 - Axioms of Probability
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • Week 2
    • 4 - Conditional Probability and Bayes
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 5 - Independence
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • Week 3
    • 6 - Random Variables I
      • Our Slides
      • Annotated Slides from Spring
      • More Slides from Spring
      • Lecture Notes
      • More Lecture Notes
    • 7 - Random Variables II
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 8 - Continuous Random Variables
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • Week 4
    • 9 - The Normal Distribution
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 10 - Joint Distributions
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 11 - Independent Random Variables
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • Week 5
    • 12 - Joint RV Statistics
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 13 - Conditional RVs
      • Our Slides
      • Annotated Slides from Spring
      • More Slides from Spring
      • Lecture Notes
      • More Lecture Notes
    • 14 - Continuous Joint Distributions
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • Week 6
    • 15 - More Cont. Joint and CLT
      • Our Slides
      • Annotated Slides from Spring
      • More Slides from Spring
      • Lecture Notes
      • More Lecture Notes
    • 16 - Sampling/Bootstrapping
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 17 - Parameters and MLE
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • Week 7
    • 18 - Beta
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 19 - Maximum a Posteriori
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 20 - Naive Bayes
      • Annotated Slides from Spring
      • Lecture Notes
    • Week 8
    • 21 - Grad. Ascent and Lin. Regr.
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • 22 - Logistic Regression
      • Our Slides
      • Annotated Slides from Spring
      • Lecture Notes
    • About Lecture
    • Lecture download
  • Problem Sets
    • Problem Set 1
    • Problem Set 2
    • Problem Set 3
    • Problem Set 4
    • Problem Set 5
    • Problem Set 6
    • PS 1 Solution
    • PS 2 Solution
    • PS 3 Solution
    • PS 4 Solution
    • PS 5 Solution
    • PS 6 Solution
  • Section
    • Section 1
      • Warmups
      • Warmups Solutions
      • Handout
      • Solutions
      • Zoom recording
    • Section 2
      • Warmups
      • Warmups Solutions
      • Handout
      • Solutions
      • Zoom recording

      • Extra: Notebook
      • Extra: Notebook Solution
    • Section 3
      • Warmups
      • Warmups Solutions
      • Handout
      • Solutions
      • Zoom recording
    • Section 4
      • Warmups
      • Warmups Solutions
      • Handout
      • Solutions
      • Zoom recording

      • Extra: Notebook
      • Extra: Notebook Solution
    • Section 5
      • Warmups
      • Warmups Solutions
      • Handout
      • Solutions
      • Zoom recording
    • Section 6
      • Warmups
      • Warmups Solutions
      • Handout
      • Solutions
      • Zoom recording

      • Extra: Notebook
      • Extra: Notebook Solution
    • Section 7
      • Warmups
      • Warmups Solutions
      • Handout
      • Solutions
      • Zoom recording

      • Extra: Notebook
      • Extra: Notebook Solution
    • Section 8
      • Warmups
      • Warmups Solutions
      • Handout
      • Solutions
  • Handouts/Demos
    • Administrivia
    • Course FAQ
    • Calculation Ref
    • Python for Probability
    • Quick Guide to LaTeX
    • Latex Cheat Sheet
    • Python Session Slides
    • Standard Normal Table
    • Normal CDF Calculator
    • Take-Home Quizzes
    • Probability Reference
    • Probability Reference (LaTeX)
    • Serendipity
    • Medical Bayes
    • Galton Board (Binomial)
    • Jurors
    • Federalist Papers
    • Dart (Joint)
    • Beta
    • Bootstrap
    • WebMD (Inference)
    • MLE and Gradient Ascent
  • Staff / Office Hours
  • Schedule

Problem Set 2: Core Probability

Due: Friday, July 10, 1:00PM Pacific Time


Resources



Problem Set


Data + Code


Template



© Stanford 2020 | Website created by Lisa Yan, Chris Piech, and Nick Troccoli.
CS109 has been developed over time by many talented teachers and leaders.