CS 412 • Tüm Sınavlar • Machine Learning
Sabancı Üniversitesi CS 412 (Machine Learning) Midterm sınavına hazırlık paketi.
İşlenen konular: Extra: Supervised Learning, K-Nearest Neighbor (kNN), Decision Trees, Regression, Logistic Regression, Neural Networks, MLP and Backpropagation, Deep Learning, Parametric Methods and Bayesian Learning, Naive Bayes.
Ayda 1166 TL, peşin fiyatına 3 taksit
Eğitmen

Nursena Köprücü Aslan
PhD in Computer Science
Koç Üniversitesi’nde Bilgisayar Mühendisliği okudum ve aynı zamanda Matematik alanında çift anadal yaptım. Ardından Imperial College London’da Machine Learning and Artificial Intelligence alanında yüksek lisansımı tamamladım. Şu anda University of Cambridge'te doktora çalışmalarımı sürdürüyorum.
Konular
Introduction
3 konu anlatımı
Introduction to Machine Learning
Machine Learning Notation Explained
Machine Learning Preliminaries
Extra: Supervised Learning
3 konu anlatımı · 1 soru
Why Supervised?
Hypothesis Space & Occam's Razor
Loss Functions: Measuring Mistakes
Example: Least-Squares Linear Regression
K-Nearest Neighbor (kNN)
9 konu anlatımı · 1 soru
Nearest Neighbor Approach
Value of k
Geometric View: Voronoi Intuition
Distance Measure
Distances for Real Vectors
Example: Computing Distance Between Two Points
Distance for Non-Numeric Data
Scaling and Normalization
Voting Mechanism
k-NN Regression
Decision Trees
5 konu anlatımı
What is a Decision Tree?
Splitting in Classification Trees
Pruning Trees
From Trees to Rules
Multivariate/Oblique Trees
Regression
8 konu anlatımı
What Is Regression?
Linear Regression
Multiple Linear Regression
Polynomial Regression
Summary: Linear, Multiple & Polynomial Regression
Feature Transformations & Feature Engineering
Feature Selection vs Feature Extraction
Feature Embedding & Factor Analysis (FA)
Logistic Regression
6 konu anlatımı
Motivation
Probabilistic Interpretation
Binary Cross Entropy / Log-loss
Optimization with Gradient Descent
Classification with Logistic Regression
Summary & Multi-Class Logistic Regression
Neural Networks, MLP and Backpropagation
7 konu anlatımı
Perceptron
Training a Perceptron
Limitation: XOR
MLP Architecture & Representation View
Backpropagation
Regression
Discrimination
Deep Learning
8 konu anlatımı
Introduction to Deep Learning & Activation Functions
Training Deep Networks
Regularization Techniques
Tuning Network Structure
Learning Time
Time-Delay Neural Networks (TDNN)
RNN / LSTM / GRU
Generative Adversarial Networks (GANs)
Extra: Probability Review
11 konu anlatımı
Counting and Probability
Conditional Probability and Independence
Bayes' Rule
Discrete Random Variables
Continuous Random Variables
Expected Value and Variance
Bernoulli and Binomial Distributions
Continuous Uniform Distribution
Exponential Distribution
Normal Distribution
Laplace and Logistic Distributions
Parametric Methods and Bayesian Learning
4 konu anlatımı · 4 soru
Maximum Likelihood Estimation(MLE)
Bernoulli Likelihood
Multinomial Likelihood and Smoothing
Bayes' Theorem
Parametric Classification
Unequal Variances → Quadratic Boundary
Gaussian Classification Boundary
Parametric & Polynomial Regression
Naive Bayes
6 konu anlatımı
Naive Bayes Approach
Curse of Dimensionality
Bayes Classifier vs. Naive Bayes
Independence & Conditional Independence
Naive Bayes Classification
How Naive Bayes Simplifies Parameter Estimation
PS Questions
2 soru
Model Selection Using Validation Performance and Test MSE
k-NN Decision Boundaries and the Effect of k
Sample Midterm Questions I
9 soru
Pass Rates & Majors (Bayes; Law of Total Probability)
Weighted Least Squares (Closed-Form Solution, Matrix View & Interpretation)
MLE for α (positive support, exponential tail)
MLP with Hard-Threshold Units
Should we initialize all MLP weights to zero?
One Shared Network vs. Three Separate Networks
Naive Histogram Estimator vs. Parzen Windows (Kernel)
Comparing Two Splits (Gini vs. Misclassification)
Prepruning vs. Postpruning (Which and Why?)
Sample Midterm Questions II
13 soru
Why Not Regression for Classification?
From Binary to Multiclass: One-vs-All / One-vs-One with a Binary Classifier
Max-shift for SoftMax
Why Initialize Weights Near Zero?
Adaptive Learning Rates in Gradient Descent
When Do Direct Input Output Links Help in an MLP?
Mahalanobis vs. Euclidean: Why and When?
Discrete Attribute in Decision Trees
Regularized Least Squares
Gaussian Generative Model → Logistic Posterior
Naive Bayes Text Classification with Binary Features
Derivative of Softmax
Choosing Between Two Splits: Gini vs. Misclassification
Past Exam Questions
10 soru
Mean Square Error for Linear Regression
Gradient Descent Update
k-NN Regression Prediction
Decision Boundary and Building a Network for Binary Classification
Derivative of Squared Error
Computing Input and Output of a Convolution Node
True/False Reasoning on Activation, Linear Networks, and Gradient Descent
Computing Total Probability
True/False on Scaling, k-NN, Intrinsic Error and Model Complexity
Output Size of a Conv Layer
Naive Bayes
8 konu anlatımı
Naive Bayes Approach
Curse of Dimensionality
Bayes Classifier vs. Naive Bayes
Independence & Conditional Independence
Naive Bayes Classification
How Naive Bayes Simplifies Parameter Estimation
Example with categorical variables
Naive Bayes Subtleties
Bayes Classifier with Multivariate Normal Distribution
2 konu anlatımı · 3 soru
Modeling Multivariate Data: Estimation, Normal Distributions, and Naive Bayes
Discrete Features & Multivariate Regression
Sample Mean and Covariance Matrix
Mahalanobis Distance
Naive Bayes Classification (Discrete Features)
Parametric Classification and Estimation
3 konu anlatımı · 5 soru
Maximum Likelihood Estimation(MLE)
Bernoulli Likelihood
Multinomial Likelihood and Smoothing
Parametric Classification
Unequal Variances → Quadratic Boundary
Gaussian Classification Boundary
Multivariate Classification: Linear, Quadratic, and Model Selection
LDA vs QDA Classification
Text Classification w/ Naive Bayes
9 konu anlatımı
Text Classification with Naïve Bayes
Text Classification Tasks
Bag-of-Words (BoW)
Naive Bayes scoring with BoW
Bernoulli Naive Bayes
Multinomial Naive Bayes
Multinomial Naive Bayes - 2
Laplace smoothing
Practical Notes
Text Processing
7 konu anlatımı
Why raw term counts aren’t enough
Transforming TF
IDF
TF-IDF
Text Preprocessing
Tokenization and Token normalization
Stop words + Stemming vs Lemmatization
Word Embeddings
11 konu anlatımı
Why text is harder than “normal” ML inputs
Bag of Words / TF-IDF
One-Hot Encoding & Distributional Hypothesis
Word Embeddings
Word2Vec idea & CBOW vs Skip-gram
Training objective & Negative Sampling
Scoring function
What embeddings capture
Limitations of Word2Vec embeddings
Language Models
Word2Vec Training Data
Semi/Self-Supervised Learning
6 konu anlatımı
Semi/Self-Supervised Learning
Pretext & Pseudo-labeling
Consistency Regularization
Representation Learning & Contrastive Learning
Semi-Supervised Learning & Entropy Minimization
Early Work in SSL
Sample Final Questions III
6 soru
Single-Neuron Sigmoid + MSE
Decision Trees: Gini Impurity Split Comparison
Decision Trees: Entropy & Information Gain Split Comparison
MLE for a Discrete PMF
1-NN LOOCV on Patient Dataset
Linear Regression + MSE: Gradient Descent Step Size Effects
Past Exam Questions
16 soru
Mean Square Error for Linear Regression
Gradient Descent Update
k-NN Regression Prediction
Decision Boundary and Building a Network for Binary Classification
Derivative of Squared Error
Computing Input and Output of a Convolution Node
True/False Reasoning on Activation, Linear Networks, and Gradient Descent
Computing Total Probability
True/False on Scaling, k-NN, Intrinsic Error and Model Complexity
Output Size of a Conv Layer
Regression: Test-Set MSE
Generalization & Overfitting: True/False
Baseline Error: ZeroR vs Random Guessing
Entropy: Fair Die & Bias Effect
Decision Trees: ID3 Optimality + Key Advantage
Decision Tree Split: Remaining Entropy