Machine Learning

Machine Learning

StatQuest with Josh Starmer via YouTube Direct link

Design Matrices For Linear Models, Clearly Explained!!!

11 of 83

11 of 83

Design Matrices For Linear Models, Clearly Explained!!!

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Machine Learning

Automatically move to the next video in the Classroom when playback concludes

  1. 1 A Gentle Introduction to Machine Learning
  2. 2 Machine Learning Fundamentals: Cross Validation
  3. 3 Machine Learning Fundamentals: The Confusion Matrix
  4. 4 Machine Learning Fundamentals: Sensitivity and Specificity
  5. 5 Machine Learning Fundamentals: Bias and Variance
  6. 6 Entropy (for data science) Clearly Explained!!!
  7. 7 The Main Ideas of Fitting a Line to Data (The Main Ideas of Least Squares and Linear Regression.)
  8. 8 Linear Regression, Clearly Explained!!!
  9. 9 Multiple Regression, Clearly Explained!!!
  10. 10 Using Linear Models for t-tests and ANOVA, Clearly Explained!!!
  11. 11 Design Matrices For Linear Models, Clearly Explained!!!
  12. 12 ROC and AUC, Clearly Explained!
  13. 13 ROC and AUC in R
  14. 14 Odds and Log(Odds), Clearly Explained!!!
  15. 15 Odds Ratios and Log(Odds Ratios), Clearly Explained!!!
  16. 16 StatQuest: Logistic Regression
  17. 17 Logistic Regression Details Pt1: Coefficients
  18. 18 Logistic Regression Details Pt 2: Maximum Likelihood
  19. 19 Logistic Regression Details Pt 3: R-squared and p-value
  20. 20 Saturated Models and Deviance
  21. 21 Logistic Regression in R, Clearly Explained!!!!
  22. 22 Deviance Residuals
  23. 23 Regularization Part 1: Ridge (L2) Regression
  24. 24 Regularization Part 2: Lasso (L1) Regression
  25. 25 Ridge vs Lasso Regression, Visualized!!!
  26. 26 Regularization Part 3: Elastic Net Regression
  27. 27 Ridge, Lasso and Elastic-Net Regression in R
  28. 28 StatQuest: Principal Component Analysis (PCA), Step-by-Step
  29. 29 StatQuest: PCA main ideas in only 5 minutes!!!
  30. 30 StatQuest: PCA - Practical Tips
  31. 31 StatQuest: PCA in R
  32. 32 StatQuest: PCA in Python
  33. 33 StatQuest: Linear Discriminant Analysis (LDA) clearly explained.
  34. 34 Bam!!! Clearly Explained!!!
  35. 35 StatQuest: MDS and PCoA
  36. 36 StatQuest: MDS and PCoA in R
  37. 37 StatQuest: t-SNE, Clearly Explained
  38. 38 StatQuest: Hierarchical Clustering
  39. 39 StatQuest: K-means clustering
  40. 40 StatQuest: K-nearest neighbors, Clearly Explained
  41. 41 Naive Bayes, Clearly Explained!!!
  42. 42 Gaussian Naive Bayes, Clearly Explained!!!
  43. 43 Decision and Classification Trees, Clearly Explained!!!
  44. 44 StatQuest: Decision Trees, Part 2 - Feature Selection and Missing Data
  45. 45 Regression Trees, Clearly Explained!!!
  46. 46 How to Prune Regression Trees, Clearly Explained!!!
  47. 47 Classification Trees in Python from Start to Finish
  48. 48 StatQuest: Random Forests Part 1 - Building, Using and Evaluating
  49. 49 StatQuest: Random Forests Part 2: Missing data and clustering
  50. 50 StatQuest: Random Forests in R
  51. 51 The Chain Rule
  52. 52 Gradient Descent, Step-by-Step
  53. 53 Stochastic Gradient Descent, Clearly Explained!!!
  54. 54 AdaBoost, Clearly Explained
  55. 55 Gradient Boost Part 1 (of 4): Regression Main Ideas
  56. 56 Gradient Boost Part 2 (of 4): Regression Details
  57. 57 Gradient Boost Part 3 (of 4): Classification
  58. 58 Gradient Boost Part 4 (of 4): Classification Details
  59. 59 Troll 2, Clearly Explained!!!
  60. 60 Support Vector Machines Part 1 (of 3): Main Ideas!!!
  61. 61 Support Vector Machines Part 2: The Polynomial Kernel (Part 2 of 3)
  62. 62 Support Vector Machines Part 3: The Radial (RBF) Kernel (Part 3 of 3)
  63. 63 Support Vector Machines in Python from Start to Finish.
  64. 64 XGBoost Part 1 (of 4): Regression
  65. 65 XGBoost Part 2 (of 4): Classification
  66. 66 XGBoost Part 3 (of 4): Mathematical Details
  67. 67 XGBoost Part 4 (of 4): Crazy Cool Optimizations
  68. 68 XGBoost in Python from Start to Finish
  69. 69 Neural Networks Pt. 1: Inside the Black Box
  70. 70 Neural Networks Pt. 2: Backpropagation Main Ideas
  71. 71 Backpropagation Details Pt. 1: Optimizing 3 parameters simultaneously.
  72. 72 Backpropagation Details Pt. 2: Going bonkers with The Chain Rule
  73. 73 Neural Networks Pt. 3: ReLU In Action!!!
  74. 74 Neural Networks Pt. 4: Multiple Inputs and Outputs
  75. 75 Neural Networks Part 5: ArgMax and SoftMax
  76. 76 The SoftMax Derivative, Step-by-Step!!!
  77. 77 Neural Networks Part 6: Cross Entropy
  78. 78 Neural Networks Part 7: Cross Entropy Derivatives and Backpropagation
  79. 79 Neural Networks Part 8: Image Classification with Convolutional Neural Networks
  80. 80 Tensors for Neural Networks, Clearly Explained!!!
  81. 81 Lowess and Loess, Clearly Explained!!!
  82. 82 Population and Estimated Parameters, Clearly Explained!!!
  83. 83 Clustering with DBSCAN, Clearly Explained!!!

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.