Become a Readings Member to make your shopping experience even easier. Sign in or sign up for free!

Become a Readings Member. Sign in or sign up for free!

Hello Readings Member! Go to the member centre to view your orders, change your details, or view your lists, or sign out.

Hello Readings Member! Go to the member centre or sign out.

An Introduction to Deep Survival Analysis Models for Predicting Time-to-Event Outcomes
Paperback

An Introduction to Deep Survival Analysis Models for Predicting Time-to-Event Outcomes

$319.99
Sign in or become a Readings Member to add this title to your wishlist.

The earliest research into time-to-event outcomes can be dated back to the 17th century. Here the initial focus was predicting time until death, hence the term survival analysis. Applications of time-to-event outcomes are to be found in many walks of life, such as insurance, medicine, and even calculating when will a customer end their subscription. Recently, the machine learning community has made significant methodological advances in survival analysis that take advantage of the representation learning ability of deep neural networks. At this point, there is a proliferation of deep survival analysis models.

In this monograph, the author provides a self-contained modern introduction to survival analysis. The focus is on predicting time-to-event outcomes at the individual data point level with the help of neural networks. They provide the reader with a working understanding of precisely what the basic time-to-event prediction problem is, how it differs from standard regression and classification, and how key "design patterns" have been used time after time to derive new time-to-event prediction models.

The author also details two extensions of the basic time-to-event prediction setup, namely the competing risks setting and the dynamic setting. The monograph concludes with a discussion of a variety of topics such as fairness, causal reasoning, interpretability, and statistical guarantees.

This timely monograph provides researchers and students with a succinct introduction to the use of time-to-event outcomes in modern artificial intelligence driven systems.

Read More
In Shop
Out of stock
Shipping & Delivery

$9.00 standard shipping within Australia
FREE standard shipping within Australia for orders over $100.00
Express & International shipping calculated at checkout

MORE INFO
Format
Paperback
Publisher
now publishers Inc
Country
United States
Date
2 January 2025
Pages
192
ISBN
9781638284543

The earliest research into time-to-event outcomes can be dated back to the 17th century. Here the initial focus was predicting time until death, hence the term survival analysis. Applications of time-to-event outcomes are to be found in many walks of life, such as insurance, medicine, and even calculating when will a customer end their subscription. Recently, the machine learning community has made significant methodological advances in survival analysis that take advantage of the representation learning ability of deep neural networks. At this point, there is a proliferation of deep survival analysis models.

In this monograph, the author provides a self-contained modern introduction to survival analysis. The focus is on predicting time-to-event outcomes at the individual data point level with the help of neural networks. They provide the reader with a working understanding of precisely what the basic time-to-event prediction problem is, how it differs from standard regression and classification, and how key "design patterns" have been used time after time to derive new time-to-event prediction models.

The author also details two extensions of the basic time-to-event prediction setup, namely the competing risks setting and the dynamic setting. The monograph concludes with a discussion of a variety of topics such as fairness, causal reasoning, interpretability, and statistical guarantees.

This timely monograph provides researchers and students with a succinct introduction to the use of time-to-event outcomes in modern artificial intelligence driven systems.

Read More
Format
Paperback
Publisher
now publishers Inc
Country
United States
Date
2 January 2025
Pages
192
ISBN
9781638284543