University of Washington - Pedro Domingos - Machine Learning
Pedro Domingos

folder Machine Learning Pedro Domingos (113 files)
file01 Introduction & Inductive learning/10. A Framework for Studying Inductive Learning.mp4 211.61MB
file10 Clustering and Dimensionality Reduction/12. Nonlinear Dimensionality Reduction.mp4 101.45MB
file10 Clustering and Dimensionality Reduction/11. Multidimensional Scaling.mp4 58.65MB
file10 Clustering and Dimensionality Reduction/10. Principal Components Analysis.mp4 112.26MB
file10 Clustering and Dimensionality Reduction/9. Hierarchical Clustering.mp4 38.37MB
file10 Clustering and Dimensionality Reduction/8. Mixture Models vs K-Means vs. Bayesian Networks.mp4 60.36MB
file10 Clustering and Dimensionality Reduction/7. EM Algorithm for Mixtures of Gaussians.mp4 100.81MB
file10 Clustering and Dimensionality Reduction/6. Mixtures of Gaussians.mp4 43.66MB
file10 Clustering and Dimensionality Reduction/5. Mixture Models.mp4 117.03MB
file10 Clustering and Dimensionality Reduction/4. K-Means Clustering.mp4 55.88MB
file10 Clustering and Dimensionality Reduction/3. Clustering and Dimensionality Reduction.mp4 64.92MB
file10 Clustering and Dimensionality Reduction/2. Generalization Bounds for SVMs.mp4 74.46MB
file10 Clustering and Dimensionality Reduction/1. Handling Noisy Data in SVMs.mp4 65.62MB
file09 Support Vector Machine/11. The SMO Algorithm.mp4 50.21MB
file09 Support Vector Machine/10. Optimization with Inequality Constraints.mp4 119.43MB
file09 Support Vector Machine/9. Constrained Optimization.mp4 147.60MB
file09 Support Vector Machine/8. Learning SVMs.mp4 123.30MB
file09 Support Vector Machine/7. Kernels.mp4 129.98MB
file09 Support Vector Machine/6. Perceptrons as Instance-Based Learning.mp4 103.62MB
file09 Support Vector Machine/5. Support Vector Machines.mp4 57.97MB
file09 Support Vector Machine/4. Sample Complexity from VC Dimension.mp4 9.74MB
file09 Support Vector Machine/3. VC Dimension of Hyperplanes.mp4 78.90MB
file09 Support Vector Machine/2. VC Dimension.mp4 76.51MB
file09 Support Vector Machine/1. Agnostic Learning.mp4 102.72MB
file08 Learning Theory/14. Examples and Definition of PAC Learning.mp4 39.77MB
file08 Learning Theory/13. How Many Examples Are Enough.mp4 114.03MB
file08 Learning Theory/12. PAC Learning.mp4 50.19MB
file08 Learning Theory/11. Bias and Variance for Other Loss Functions.mp4 32.52MB
file08 Learning Theory/10. Bias-Variance Decomposition for Zer -One Loss.mp4 32.38MB
file08 Learning Theory/9. General Bias Variance Decomposition.mp4 88.23MB
file08 Learning Theory/8. Bias Variance Decomposition for Squared Loss.mp4 31.72MB
file08 Learning Theory/7. Bias and Variance.mp4 92.37MB
file08 Learning Theory/6. Practical Consequences of 'No Free Lunch'.mp4 48.29MB
file08 Learning Theory/5. 'No Free Lunch' Theorems.mp4 89.69MB
file08 Learning Theory/4. Learning Theory.mp4 14.35MB
file08 Learning Theory/3. Stacking.mp4 88.03MB
file08 Learning Theory/2. Error Correcting Output Coding.mp4 88.90MB
file08 Learning Theory/1. Boosting- The Details.mp4 61.90MB
file07 Model Ensembles/12. Boosting- The Basics.mp4 40.82MB
file07 Model Ensembles/11. Bagging.mp4 45.50MB
file07 Model Ensembles/10. Model Ensembles.mp4 15.47MB
file07 Model Ensembles/9. Avoiding Overfitting in Neural Networks.mp4 51.31MB
file07 Model Ensembles/8. Expressiveness of Neural Networks.mp4 37.98MB
file07 Model Ensembles/7. Learning Hidden Layer Representations.mp4 71.28MB
file07 Model Ensembles/6. Issues in Backpropagation.mp4 126.74MB
file07 Model Ensembles/5. Backpropagation.mp4 100.47MB
file07 Model Ensembles/4. Multilayer Perceptrons.mp4 75.85MB
file07 Model Ensembles/3. Stochastic Gradient Descent.mp4 33.78MB
file07 Model Ensembles/2. Gradient Descent vs Perceptron Training.mp4 56.58MB
Too many files! Click here to view them all.
Type: Course
Tags: Pedro Domingos, Machine Learning Course, University of Washington

Bibtex:
@article{,
title= {University of Washington - Pedro Domingos - Machine Learning},
keywords= {Pedro Domingos, Machine Learning Course, University of Washington},
journal= {},
author= {Pedro Domingos},
year= {},
url= {https://www.youtube.com/user/UWCSE/playlists?sort=dd&view=50&shelf_id=16},
license= {},
abstract= {Video Lecture of Course Data Mining & Machine Learning by Prof Pedro Domingos, University of Washington USA.},
superseded= {},
terms= {}
}


Send Feedback Start
   0.000005
DB Connect
   0.000340
Lookup hash in DB
   0.000608
Get torrent details
   0.000642
Get torrent details, finished
   0.000600
Get authors
   0.000039
Parse bibtex
   0.000379
Write header
   0.000433
get stars
   0.000455
home tab
   0.001712
render right panel
   0.000012
render ads
   0.000045
fetch current hosters
   0.000930
Done