The course extends the fundamental tools in "Machine Learning Foundations" to powerful and practical models by three directions, which includes embedding numerous features, combining predictive features, and distilling hidden features. [這門課將先前「機器學習基石」課程中所學的基礎工具往三個方向延伸為強大而實用的工具。這三個方向包括嵌入大量的特徵、融合預測性的特徵、與萃取潛藏的特徵。]

機器學習技法 (Machine Learning Techniques)

機器學習技法 (Machine Learning Techniques)

Instructor: 林軒田
Access provided by Mojatu Foundation
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There are 16 modules in this course
more robust linear classification solvable with quadratic programming
What's included
5 videos4 readings
another QP form of SVM with valuable geometric messages and almost no dependence on the dimension of transformation
What's included
4 videos
kernel as a shortcut to (transform + inner product): allowing a spectrum of models ranging from simple linear ones to infinite dimensional ones with margin control
What's included
4 videos
a new primal formulation that allows some penalized margin violations, which is equivalent to a dual formulation with upper-bounded variables
What's included
4 videos1 assignment
soft-classification by an SVM-like sparse model using two-level learning, or by a "kernelized" logistic regression model using representer theorem
What's included
4 videos
kernel ridge regression via ridge regression + representer theorem, or support vector regression via regularized tube error + Lagrange dual
What's included
4 videos
blending known diverse hypotheses uniformly, linearly, or even non-linearly; obtaining diverse hypotheses from bootstrapped data
What's included
4 videos
"optimal" re-weighting for diverse hypotheses and adaptive linear aggregation to boost weak algorithms
What's included
4 videos1 assignment
recursive branching (purification) for conditional aggregation of simple hypotheses
What's included
4 videos
bootstrap aggregation of randomized decision trees with automatic validation
What's included
4 videos
aggregating trees from functional + steepest gradient descent subject to any error measure
What's included
4 videos
automatic feature extraction from layers of neurons with the back-propagation technique for stochastic gradient descent
What's included
4 videos1 assignment
an early and simple deep learning model that pre-trains with denoising autoencoder and fine-tunes with back-propagation
What's included
4 videos
linear aggregation of distance-based similarities to prototypes found by clustering
What's included
4 videos
linear models of items on extracted user features (or vice versa) jointly optimized with stochastic gradient descent for recommender systems
What's included
4 videos
summary from the angles of feature exploitation, error optimization, and overfitting elimination towards practical use cases of machine learning
What's included
4 videos1 assignment
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