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In diesem Kurs gibt es 6 Module
Master advanced Bayesian inference techniques and their practical applications in data science. This course will equip you with cutting-edge methods, including variational inference, Bayesian decision theory, and non-parametric approaches. You'll learn to quantify uncertainty in predictions, make principled decisions using loss functions, and implement flexible models that adapt complexity to data. Through hands-on projects using PyMC3 and real-world case studies, you'll develop expertise in the complete Bayesian workflow: from model specification to validation. The course emphasizes scalable alternatives to MCMC, including variational inference for large datasets, and covers advanced topics such as Dirichlet processes and Gaussian process regression.
What makes this course unique is its focus on practical implementation and decision-making under uncertainty. You'll gain skills in probabilistic programming, model evaluation, and applying Bayesian methods to diverse domains. By completing this course, you'll be equipped to tackle complex data problems with rigorous statistical methods and communicate uncertainty effectively in professional settings.
Welcome to Advanced Bayesian Methods and Applications! In this module, we will see an alternative to MCMC that is able to scale to large datasets, namely, Variational Inference (VI). VI transforms the sampling problem to an optimization one and trades off accuracy for speed. We will also learn how to implement these approaches and when we should prefer VI over MCMC.
Das ist alles enthalten
5 Videos6 Lektüren4 Aufgaben
Infos zu Modulinhalt anzeigen
5 Videos•Insgesamt 18 Minuten
Advanced Bayesian Inference and Decision Making•3 Minuten
Why do we need Variational Inference?•3 Minuten
Core of Variational Inference•5 Minuten
Mean-Field Approximation•3 Minuten
VI - vs - MCMC•4 Minuten
6 Lektüren•Insgesamt 55 Minuten
Course Overview•10 Minuten
Technical and Accessibility Support•5 Minuten
Kullback-Leibler divergence•15 Minuten
Multimodal learning•10 Minuten
Module Wrap-Up•5 Minuten
Recommended Learning Resources•10 Minuten
4 Aufgaben•Insgesamt 96 Minuten
Let's Practice: Variational Inference•30 Minuten
Variational Inference•18 Minuten
VI flavors and benefits over MCMC•18 Minuten
Test Yourself: Variational Inference•30 Minuten
Bayesian Decision Theory & Prediction
Modul 2•3 Stunden abzuschließen
Moduldetails
In this module, we will learn how to use the uncertainty quantified by Bayesian analysis and loss functions to make decisions in a principled way. We will also look at multi-objective decisions, where we have to balance several - possibly conflicting - objectives.
Das ist alles enthalten
4 Videos3 Lektüren5 Aufgaben1 Unbewertetes Labor
Infos zu Modulinhalt anzeigen
4 Videos•Insgesamt 17 Minuten
Bayesian Decision Theory•3 Minuten
The role of loss function•5 Minuten
Multi-objective loss functions•4 Minuten
Connection with Machine Learning•4 Minuten
3 Lektüren•Insgesamt 28 Minuten
Realistic Loss Functions•10 Minuten
Prediction as a decision problem•10 Minuten
Module Wrap-Up•8 Minuten
5 Aufgaben•Insgesamt 100 Minuten
Let's Practice: Bayesian Decision Theory & Prediction•30 Minuten
Decision theory and loss functions•18 Minuten
Lab Check-in: A new regulation: To adopt it or not?•7 Minuten
Multi-objective loss functions•15 Minuten
Test Yourself: Bayesian Decision Theory & Prediction•30 Minuten
1 Unbewertetes Labor•Insgesamt 60 Minuten
A new regulation: To adopt it or not?•60 Minuten
Bayesian Non-Parametric Methods
Modul 3•5 Stunden abzuschließen
Moduldetails
In this module, we will explore the world of non-parametric Bayesian models. These models provide a lot of flexibility and allow the model complexity to grow with the data. We will see how Gaussian Process Regression and Dirichlet processes work with applications on function estimation and clustering, respectively. We will finally see that this flexibility comes with an important cost - computational complexity - which might hinder the applicability of these methods on large-scale problems/data.
Das ist alles enthalten
4 Videos3 Lektüren5 Aufgaben2 Unbewertete Labore
Infos zu Modulinhalt anzeigen
4 Videos•Insgesamt 18 Minuten
Non-parametric models & flexibility•4 Minuten
Gaussian Process Regression•5 Minuten
Dirichlet Process Clustering•5 Minuten
Practical considerations & tradeoffs•4 Minuten
3 Lektüren•Insgesamt 43 Minuten
Gaussian Process Regression for temperature data •18 Minuten
Non-parametric models and Gaussian Processes•15 Minuten
Lab Check-in: Clustering with Dirichlet Processes and Gaussian Mixtures•5 Minuten
Clustering and sequential sampling•15 Minuten
Test Yourself: Bayesian Non-Parametric Methods•30 Minuten
2 Unbewertete Labore•Insgesamt 120 Minuten
GPR for temperature•60 Minuten
Clustering with Dirichlet Processes and Gaussian Mixtures•60 Minuten
Probabilistic Programming and Bayesian Workflow
Modul 4•3 Stunden abzuschließen
Moduldetails
In this module, we are going to put together pieces that we have seen throughout the course and all together form what we call the Bayesian workflow. We will define probabilistic programming and focus on the use of PyMC for building Bayesian models. We will see an end-to-end example of Bayesian inference that incorporates all the necessary steps of the workflow.
Das ist alles enthalten
5 Videos2 Lektüren5 Aufgaben1 Unbewertetes Labor
Infos zu Modulinhalt anzeigen
5 Videos•Insgesamt 22 Minuten
Applied Bayesian Data Analysis Wrap-up•2 Minuten
Probabilistic programming•3 Minuten
Bayesian Workflow•5 Minuten
End-to-End example: Coin Bias•6 Minuten
Pros, Cons and Real-World Applications•6 Minuten
2 Lektüren•Insgesamt 23 Minuten
PyMC resources•20 Minuten
Module Wrap-Up•3 Minuten
5 Aufgaben•Insgesamt 95 Minuten
Let's Practice: Probabilistic Programming and Bayesian Workflow•30 Minuten
Probabilistic Programming•15 Minuten
Lab Check-in: Bayesian Workflow•5 Minuten
Bayesian Workflow•15 Minuten
Test Yourself: Probabilistic Programming and Bayesian Workflow•30 Minuten
1 Unbewertetes Labor•Insgesamt 60 Minuten
Bayesian Workflow•60 Minuten
Bayesian Methods in Sports Analytics and Medicine
Modul 5•7 Stunden abzuschließen
Moduldetails
In this module, we are going to look at specific applications of Bayesian modeling and inference in two fast-evolving fields, sports analytics and medical informatics. We are going to see how we can use Bayesian models to obtain team strengths, including the uncertainty around this estimate. We will also see 2 applications in medical informatics; one for disease progression and one for predicting treatment effect.
Das ist alles enthalten
2 Videos4 Lektüren4 Aufgaben3 Unbewertete Labore
Infos zu Modulinhalt anzeigen
2 Videos•Insgesamt 10 Minuten
Team evaluation through Bayesian regression•4 Minuten
Diabetes progression•5 Minuten
4 Lektüren•Insgesamt 62 Minuten
Sports Analytics Applications•12 Minuten
A Better Choice for Prior•25 Minuten
Medical Informatics Applications•20 Minuten
Module Wrap-Up•5 Minuten
4 Aufgaben•Insgesamt 110 Minuten
Lab Check-in: Predicting Chemotherapy Response in Cancer Patients•25 Minuten
Test Yourself: Sports Analytics and Medicine•30 Minuten
Bayesian models for team evaluation•25 Minuten
Let's Practice: Sports Analytics and Medicine•30 Minuten
3 Unbewertete Labore•Insgesamt 180 Minuten
NFL Ratings•60 Minuten
Diabetes progression•60 Minuten
Predicting Chemotherapy Response in Cancer Patients•60 Minuten
Course Wrap-Up
Modul 6•1 Stunde abzuschließen
Moduldetails
In this module, we will see a full summary of the course starting from Bayesian thinking and moving to Bayesian inference. We will then make a stop on one of the most important Bayesian modeling frameworks, namely, hierarchical models, and we will finally wrap up with the ultimate task we have in the real world, i.e., decision making.
Das ist alles enthalten
4 Videos2 Lektüren
Infos zu Modulinhalt anzeigen
4 Videos•Insgesamt 15 Minuten
Review: Bayesian Thinking•4 Minuten
Review: Bayesian Inference•4 Minuten
Review: Bayesian Hierarchical Models•4 Minuten
Review: Bayesian Decision Making•4 Minuten
2 Lektüren•Insgesamt 16 Minuten
Module Wrap-Up•6 Minuten
Course Summary•10 Minuten
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