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TileStats @UCZQqrFW2VkirBF2a-aV1Fdw@youtube.com

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Hi My name is Andreas Tilevik. With this channel, I thought


20:00
Stochastic gradient descent (SGD) vs mini-batch GD | iterations vs epochs - Explained
10:12
How to compute a p value and extract a critical value in R
15:03
Multinomial logistic regression | softmax regression | explained
20:21
Why we divide by n-1 when calculating the sample variance – the proof | unbiased estimator
12:27
Expected value vs mean
13:24
Bootstrap confidence intervals - explained
08:31
How to identify and deal with outliers | The 1.5 IQR rule | Boxplots
31:35
Bayesian statistics - the basics
17:09
How to check normal distribution | The normality assumption
14:09
PERMANOVA and permutation tests - explained
15:31
Statistical power - Parametric vs Nonparametric test
11:41
Meta-analysis | The inverse variance method | Forest plot in R
09:51
The Mantel-Haenszel method - clearly explained | deal with confounding
13:12
Understanding the odds ratio (OR) and the rare disease assumption | OR = RR?
10:09
Relative risk - how to calculate and interpret | 95% CI
05:27
Odds vs Probability - explained
16:49
The SIR model | the math of epidemics - explained with a simple example
26:20
Receptor ligand kinetics | mathematical modeling
13:08
How to build a system of differential equations (ODEs)
31:17
How to select a multivariate analysis or machine learning method
09:44
How to solve ordinary differential equations (ODEs) in R (deSolve)
10:20
Euler's method | Numerial methods
11:10
Understanding ordinary differential equations (ODE) - super simple example
13:36
The Cox proportional hazards model explained
12:56
Comparing Kaplan-Meier curves - the Log-rank test
19:29
Kaplan Meier curve – explained
12:48
Nonlinear mixed effects models (NLME) - explained
08:52
Nonlinear regression - how to fit a logistic growth model to data
05:09
Nonlinear regression - how to fit a dose-response curve in R
13:58
Nonlinear regression - comparing models with F test and AIC | parameter correlation
14:17
The Gauss Newton Method - explained with a simple example
10:55
Newton's method - explained | Newton-Raphson method | find roots and minimum value
16:46
Neural networks with continuous output | ANN vs Regression
18:16
Gradient descent - with a simple example
19:15
Nonlinear regression - the basics
20:38
Image classification with machine learning - explained | CNN ANN Logistic regression Decision trees
09:42
Understanding exponential decay and half-life with examples
11:13
Doubling time formulas with examples
14:56
Understanding exponential growth | discrete vs continuous growth
10:47
Why do we use Euler's number e?
12:40
Numerical differentiation - simply explained
26:14
Artificial neural networks (ANN) - explained super simple
12:10
Second derivative and partial derivative - the basics
08:58
Understanding derivatives - the basics
07:40
Understanding logarithms
13:34
Understanding the equation of a straight line | find equation | find line
16:35
Assumptions in Linear Regression - explained | residual analysis
08:19
Gaussian naive Bayes - explained with a simple example
12:55
Regression vs ANOVA and t-test
07:48
The weighted mean - explained
28:44
Support Vector Machines (SVM) - the basics | simply explained
18:35
Lasso regression - explained
09:17
Forward and backward selection and best subset selection
13:21
Model selection with AIC and AICc
13:48
MLE vs OLS | Maximum likelihood vs least squares in linear regression
06:43
Probability vs Likelihood - Explained
11:00
Linear mixed effects models - random slopes and interactions | R and SPSS
11:27
Linear mixed effects models - the basics
15:02
Cellular automata tutorial - how to implement a CA in R
13:03
Cellular automata tutorial - applications (epidemic and movements)