» » A B Testing, A Data Science Perspective

Information of news
  • Author: BaDshaH
  • Date: 6-12-2015, 09:10
6-12-2015, 09:10

A B Testing, A Data Science Perspective

Category: Tutorials

Deciding whether not to launch a new product feature is a resource management bet f any Internet business. Conducting rigous online A/B tests flattens the risk. Drawing on her experience at Airbnb, data scientist Lisa Qian offers a practical ten-step guide to designing and executing statistically sound A/B tests.
- Discover best practices f defining test goals and hypotheses
- Learn to identify controls, treatments, key metrics, and data collection needs
- Understand the role of appropriate logging in data collection
- Determine how to frame your tests (size of difference detection, visit sample size, etc.)
- Master the imptance of testing f systematic biases
- Run power tests to determine how much data to collect
- Learn how experimenting on logged out users can introduce bias
- Understand when cannibalization is an issue and how to deal with it
- Review accepted A/B testing tools (Google Analytics, Vanity, Unbounce, among others)
Lisa Qian focuses on search and discovery at Airbnb. She has a PhD in Applied Physics from Stanfd University.

I recommends Buy premimum account for High speed+parallel downloads!




Site BBcode/HTML Code:
Dear visitor, you went to the site as unregistered user.
We recommend you Sign up or Login to website under your name.
Would you like to leave your comment? Please Login to your account to leave comments. Don't have an account? You can create a free account now.

Tag Cloud

archive of news

free html hit counter