Allen Downey: Bayesian Decision Analysis [Tutorial] | PyData Global 2022

  Рет қаралды 7,450

PyData

PyData

Күн бұрын

This tutorial is a hands-on introduction to Bayesian Decision Analysis (BDA), which is a framework for using probability to guide decision-making under uncertainty. I start with Bayes's Theorem, which is the foundation of Bayesian statistics, and work toward the Bayesian bandit strategy, which is used for A/B testing, medical tests, and related applications. For each step, I provide a Jupyter notebook where you can run Python code and work on exercises. In addition to the bandit strategy, I summarize two other applications of BDA, optimal bidding and deriving a decision rule. Finally, I suggest resources you can use to learn more.
Outline * Problem statement: A/B testing, medical tests, and the Bayesian bandit problem * Prerequisites and goals * Bayes's theorem and the five urn problem * Using Pandas to represent a PMF * Notebook 1: Estimating proportions * From belief to strategy: Thompson sampling * Notebook 2: Implementing and testing Thompson sampling * Debrief: why Bayesian decision analysis is better * More generally: two other examples of BDA * Resources and next steps
Prerequisites
For this tutorial, you should be familiar with Python at an intermediate level. We'll use NumPy, SciPy, and Pandas, but I'll explain what you need to know as we go. You should be familiar with basic probability, but you don't need to know anything about Bayesian statistics.
I'll provide Jupyter notebooks that run on Colab, so you don't have to install anything or prepare ahead of time. But you should be familiar with Jupyter notebooks.
Bio:
Allen Downey
Allen Downey is a Staff Scientist at DrivenData and Professor Emeritus at Olin College.
He is the author of several textbooks -- including Think Python, Think Bayes, and Elements of Data Science -- and "Probably Overthinking It", a blog about data science and Bayesian statistics. He received a Ph.D. in computer science from U.C. Berkeley and Bachelor's and Master's degrees from MIT.
===
www.pydata.org
PyData is an educational program of NumFOCUS, a 501(c)3 non-profit organization in the United States. PyData provides a forum for the international community of users and developers of data analysis tools to share ideas and learn from each other. The global PyData network promotes discussion of best practices, new approaches, and emerging technologies for data management, processing, analytics, and visualization. PyData communities approach data science using many languages, including (but not limited to) Python, Julia, and R.
PyData conferences aim to be accessible and community-driven, with novice to advanced level presentations. PyData tutorials and talks bring attendees the latest project features along with cutting-edge use cases.
00:00 Welcome!
00:10 Help us add time stamps or captions to this video! See the description for details.
Want to help add timestamps to our KZbin videos to help with discoverability? Find out more here: github.com/numfocus/KZbinVi...

Пікірлер: 6
@ahmedelgammal1605
@ahmedelgammal1605 Жыл бұрын
One of the best lectures I ever had ❤❤❤
@neptunesbounty1786
@neptunesbounty1786 Жыл бұрын
The GOAT
@jacobrosen3382
@jacobrosen3382 6 ай бұрын
6:00 start
@aruncps
@aruncps 9 ай бұрын
awesome
@kezif
@kezif 10 ай бұрын
Why likelihood_win is defined as index of value (0-100) divided by 100? It made sense with urns, because each urn had n/m (n - index of urn, m - total number of urns) probability of drawing blue marble. Does likelihood of win in case of bandits say that with higher value of x we are getting higher probability of winning?
@AI_BotBuilder
@AI_BotBuilder Жыл бұрын
Where do these pydata meetings take place? How can I participate as a listener? I’m self taught, so I don’t have access to academic groups or all these university professors lectures, academia in general, I mostly spend learning applied maths and python by myself and never took part in public group meetings due to personal issues, but I would like to join meetings like this and learn if they are open to public common people interested. Thankyou.
Beginner's Crash Course to Elastic Stack -  Part 1: Intro to Elasticsearch and Kibana
56:42
Clowns abuse children#Short #Officer Rabbit #angel
00:51
兔子警官
Рет қаралды 21 МЛН
100❤️
00:19
MY💝No War🤝
Рет қаралды 21 МЛН
Survival skills: A great idea with duct tape #survival #lifehacks #camping
00:27
Incredible magic 🤯✨
00:53
America's Got Talent
Рет қаралды 73 МЛН
The Bayesians are Coming to Time Series
53:17
AICamp
Рет қаралды 23 М.
Everything You Ever Wanted to Know About Bayes' Theorem But Were Afraid To Ask.
5:48
Allen Downey | Probably Overthinking It | Talks at Google
48:59
Talks at Google
Рет қаралды 10 М.
Thomas J. Fan - Time Series EDA with STUMPY
26:24
PyData NYC
Рет қаралды 434
Learning to Love Bayesian Statistics
18:36
Allen Downey
Рет қаралды 37 М.
Machine Learning: Bayes Decision Theory
7:33
Boris Meinardus
Рет қаралды 22 М.
Allen Downey- Chasing the Overton Window | PyData NYC 2022
40:45
Cheapest gaming phone? 🤭 #miniphone #smartphone #iphone #fy
0:19
Как слушать музыку с помощью чека?
0:36
WATERPROOF RATED IP-69🌧️#oppo #oppof27pro#oppoindia
0:10
Fivestar Mobile
Рет қаралды 18 МЛН
Красиво, но телефон жаль
0:32
Бесполезные Новости
Рет қаралды 776 М.