CS 454Tüm SınavlarIntroduction to Machine Learning and Artificial Neural Networks

Özyeğin Üniversitesi CS 454 (Introduction to Machine Learning and Artificial Neural Networks) Midterm sınavına hazırlık paketi.

İşlenen konular: Supervised Learning, Parametric Methods, Multivariate Methods, Dimensionality Reduction, Clustering.

3998 TL

Ayda 1332 TL, peşin fiyatına 3 taksit

12 soru çözümü
38 konu anlatımı · 5 sa 52 dk

Eğitmen

Nursena Köprücü Aslan

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

Ders Tanıtımı

Introduction to Machine Learning

Ücretsiz

Machine Learning Notation Explained

Machine Learning Preliminaries

Why Supervised?

Ücretsiz

Hypothesis Space & Occam's Razor

Loss Functions: Measuring Mistakes

Example: Least-Squares Linear Regression

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

Maximum Likelihood Estimation(MLE)

Bernoulli Likelihood

Ücretsiz

Multinomial Likelihood and Smoothing

Ücretsiz

Bayes' Theorem

Parametric Classification

Unequal Variances → Quadratic Boundary

Gaussian Classification Boundary

Parametric & Polynomial Regression

Modeling Multivariate Data: Estimation, Normal Distributions, and Naive Bayes

Multivariate Classification: Linear, Quadratic, and Model Selection

Discrete Features & Multivariate Regression

Dimensionality Reduction

Principal Component Analysis (PCA)

Feature Embedding & Factor Analysis (FA)

Singular Value Decomposition and Matrix Factorization

Multidimensional Scaling

Linear Discriminant Analysis (LDA)

Canonical Correlation Analysis

Isomap, Locally Linear Embedding, Laplacian Eigenmaps

Introduction and Mixture Densities

K-Means Clustering

Expectation-Maximization (EM)

Mixture Models & Practical Use of Clusters

Spectral and Hierarchical Clustering

Pass Rates & Majors (Bayes; Law of Total Probability)

Ücretsiz

Weighted Least Squares (Closed-Form Solution, Matrix View & Interpretation)

Ücretsiz

MLE for α (positive support, exponential tail)

Naive Histogram Estimator vs. Parzen Windows (Kernel)

Kernel Smoother

Naive Density Estimator (Bandwidth effect & validity)

Comparing Two Splits (Gini vs. Misclassification)

Prepruning vs. Postpruning (Which and Why?)

CS 454 Tüm Sınavlar Hakkında Sıkça Sorulan Sorular

Sıkça Sorulan Sorular

3998 TL