Elastic Net Regularization : Data Science Concepts

ritvikmath · Beginner ·📐 ML Fundamentals ·1y ago
Balancing between L1 and L2 regularization! Lasso (L1) : https://www.youtube.com/watch?v=jbwSCwoT51M Ridge (L2): https://www.youtube.com/watch?v=5asL5Eq2x0A 0:00 Intro 1:39 Lasso Recap 5:05 Ridge Recap 7:46 Elastic Net
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1 Math Team Update
Math Team Update
ritvikmath
2 Single Variable Calculus Volume of a Sphere - Proof 1
Single Variable Calculus Volume of a Sphere - Proof 1
ritvikmath
3 Single Variable Calculus Volume of a Sphere - Proof 2
Single Variable Calculus Volume of a Sphere - Proof 2
ritvikmath
4 Multivariable Calculus Volume of a Sphere Proof - Triple Integrals
Multivariable Calculus Volume of a Sphere Proof - Triple Integrals
ritvikmath
5 Multivariable Calculus Volume of a Sphere Proof - Double Integrals
Multivariable Calculus Volume of a Sphere Proof - Double Integrals
ritvikmath
6 The Euclidian Algorithm
The Euclidian Algorithm
ritvikmath
7 Proving the Chain Rule
Proving the Chain Rule
ritvikmath
8 Proving the Fundamental Theorem of Calculus Part 1
Proving the Fundamental Theorem of Calculus Part 1
ritvikmath
9 Proving the Fundamental Theorem of Calculus Part 2
Proving the Fundamental Theorem of Calculus Part 2
ritvikmath
10 Math Puzzle - Poison Perplexity
Math Puzzle - Poison Perplexity
ritvikmath
11 Math Puzzle - Poison Perplexity - Solution
Math Puzzle - Poison Perplexity - Solution
ritvikmath
12 Expected Value and Variance of Continuous Random Variables (Calculus)
Expected Value and Variance of Continuous Random Variables (Calculus)
ritvikmath
13 Expected Value and Variance of Discrete Random Variables (No Calculus)
Expected Value and Variance of Discrete Random Variables (No Calculus)
ritvikmath
14 Array Method
Array Method
ritvikmath
15 Complex Power Series and their Derivatives
Complex Power Series and their Derivatives
ritvikmath
16 Distributions - Intro
Distributions - Intro
ritvikmath
17 The Poisson Distribution
The Poisson Distribution
ritvikmath
18 The Bernoulli Distribution
The Bernoulli Distribution
ritvikmath
19 The Binomial Distribution
The Binomial Distribution
ritvikmath
20 The Continuous Uniform Distribution
The Continuous Uniform Distribution
ritvikmath
21 The Geometric Distribution
The Geometric Distribution
ritvikmath
22 The Triangular Distribution
The Triangular Distribution
ritvikmath
23 The Exponential Distribution
The Exponential Distribution
ritvikmath
24 The Borel Distribution + Notes on Poisson Distribution
The Borel Distribution + Notes on Poisson Distribution
ritvikmath
25 The Gamma Distribution
The Gamma Distribution
ritvikmath
26 The Normal Distribution
The Normal Distribution
ritvikmath
27 The Laplace Distribution
The Laplace Distribution
ritvikmath
28 The Chi - Squared Distribution
The Chi - Squared Distribution
ritvikmath
29 Overfitting
Overfitting
ritvikmath
30 Vector Norms
Vector Norms
ritvikmath
31 Truths Behind the Titanic : K-Nearest Neighbor
Truths Behind the Titanic : K-Nearest Neighbor
ritvikmath
32 The Mathematics of Breakups
The Mathematics of Breakups
ritvikmath
33 Sillyfish
Sillyfish
ritvikmath
34 Finding Optimal Paths - Dynamic Programming
Finding Optimal Paths - Dynamic Programming
ritvikmath
35 HowToDataScience : Scraping Twitter Data
HowToDataScience : Scraping Twitter Data
ritvikmath
36 Decision Trees
Decision Trees
ritvikmath
37 Perceptron
Perceptron
ritvikmath
38 Naive Bayes
Naive Bayes
ritvikmath
39 K-Nearest Neighbor
K-Nearest Neighbor
ritvikmath
40 Evaluating Machine Learning Models
Evaluating Machine Learning Models
ritvikmath
41 Decision Tree Pruning
Decision Tree Pruning
ritvikmath
42 K-Means Clustering
K-Means Clustering
ritvikmath
43 Gaussian Mixture Model
Gaussian Mixture Model
ritvikmath
44 Data Science - Fuzzy Record Matching
Data Science - Fuzzy Record Matching
ritvikmath
45 Time Series Talk : Autocorrelation and Partial Autocorrelation
Time Series Talk : Autocorrelation and Partial Autocorrelation
ritvikmath
46 Time Series Talk : Autoregressive Model
Time Series Talk : Autoregressive Model
ritvikmath
47 Time Series Talk : Moving Average Model
Time Series Talk : Moving Average Model
ritvikmath
48 Time Series Talk : ARMA Model
Time Series Talk : ARMA Model
ritvikmath
49 Time Series Talk : ARCH Model
Time Series Talk : ARCH Model
ritvikmath
50 Time Series Talk : White Noise
Time Series Talk : White Noise
ritvikmath
51 Time Series Talk : Stationarity
Time Series Talk : Stationarity
ritvikmath
52 Time Series Talk : ARIMA Model
Time Series Talk : ARIMA Model
ritvikmath
53 Time Series Talk : Lag Operator
Time Series Talk : Lag Operator
ritvikmath
54 Time Series Talk : What is Seasonality ?
Time Series Talk : What is Seasonality ?
ritvikmath
55 Time Series Talk : Seasonal ARIMA Model
Time Series Talk : Seasonal ARIMA Model
ritvikmath
56 So ... What Actually is a Matrix ? : Data Science Basics
So ... What Actually is a Matrix ? : Data Science Basics
ritvikmath
57 Derivative of a Matrix : Data Science Basics
Derivative of a Matrix : Data Science Basics
ritvikmath
58 Basics of PCA (Principal Component Analysis) : Data Science Concepts
Basics of PCA (Principal Component Analysis) : Data Science Concepts
ritvikmath
59 Eigenvalues & Eigenvectors : Data Science Basics
Eigenvalues & Eigenvectors : Data Science Basics
ritvikmath
60 The Covariance Matrix : Data Science Basics
The Covariance Matrix : Data Science Basics
ritvikmath

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Chapters (4)

Intro
1:39 Lasso Recap
5:05 Ridge Recap
7:46 Elastic Net
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Reasoning Under Uncertainty
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