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Applied Machine Learning Online Course
RBF-Kernel
RBF-Kernel
Instructor:
Applied AI Course
Duration:
22 mins
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Polynomial Kernel
Domain specific Kernels
Support Vector Machines (SVM)
1.1
Geometric Intution
20 min
1.2
Mathematical derivation
32 min
1.3
Why we take values +1 and and -1 for Support vector planes
9 min
1.4
Loss function (Hinge Loss) based interpretation
18 min
1.5
Dual form of SVM formulation
16 min
1.6
kernel trick
10 min
1.7
Polynomial Kernel
11 min
1.8
RBF-Kernel
22 min
1.9
Domain specific Kernels
6 min
1.10
Train and run time complexities
8 min
1.11
nu-SVM: control errors and support vectors
6 min
1.12
SVM Regression
8 min
1.13
Cases
9 min
1.14
Code Sample
14 min
1.15
Revision Questions
30 min
Interview Questions on Support Vector Machine
2.1
Questions & Answers
30 min
Decision Trees
3.1
Geometric Intuition of decision tree: Axis parallel hyperplanes
17 min
3.2
Sample Decision tree
8 min
3.3
Building a decision Tree:Entropy
19 min
3.4
KL Divergence
14 min
3.5
Building a decision Tree:Information Gain
10 min
3.6
Building a decision Tree: Gini Impurity
7 min
3.7
Building a decision Tree: Constructing a DT
21 min
3.8
Building a decision Tree: Splitting numerical features
8 min
3.9
Feature standardization
4 min
3.10
Building a decision Tree:Categorical features with many possible values
7 min
3.11
Overfitting and Underfitting
8 min
3.12
Train and Run time complexity
7 min
3.13
Regression using Decision Trees
9 min
3.14
Cases
12 min
3.15
Code Samples
9 min
3.16
Revision Questions
30 min
Interview Questions on decision Trees
4.1
Questions & Answers
30 min
Ensemble Models
5.1
What are ensembles?
6 min
5.2
Bootstrapped Aggregation (Bagging) Intuition
17 min
5.3
Random Forest and their construction
15 min
5.4
Bias-Variance tradeoff
7 min
5.5
Bagging Train and run time complexity
9 min
5.6
Bagging:Code Sample
4 min
5.7
Extremely randomized trees
8 min
5.8
Random Forest :Cases
6 min
5.9
Boosting Intuition
17 min
5.10
Residuals, Loss functions and gradients
13 min
5.11
Gradient Boosting
10 min
5.12
Regularization by Shrinkage
8 min
5.13
Train and Run time complexity
6 min
5.14
XGBoost: Boosting + Randomization
14 min
5.15
AdaBoost: geometric intuition
7 min
5.16
Stacking models
22 min
5.17
Cascading classifiers
15 min
5.18
Kaggle competitions vs Real world
9 min
5.19
Revision Questions
30 min
Module 4: Live Sessions
6.1
Code Walkthrough: Models in Scikit-Learn
6.2
Interview Questions on SVMs
6.3
Interview Questions on Boosting and Bagging
6.4
Attribution Models in Marketing
6.5
Attribution Models in Marketing-Part 2
6.6
LIVE_ Monte Carlo Simulations
6.7
Which ML/DL technique to use where?
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