Recovering Loss to Followup Information Using Denoising Autoencoders

02/12/2018
by   Lovedeep Gondara, et al.
0

Loss to followup is a significant issue in healthcare and has serious consequences for a study's validity and cost. Methods available at present for recovering loss to followup information are restricted by their expressive capabilities and struggle to model highly non-linear relations and complex interactions. In this paper we propose a model based on overcomplete denoising autoencoders to recover loss to followup information. Designed to work with high volume data, results on various simulated and real life datasets show our model is appropriate under varying dataset and loss to followup conditions and outperforms the state-of-the-art methods by a wide margin (> 20% in some scenarios) while preserving the dataset utility for final analysis.

READ FULL TEXT
research
05/08/2017

Multiple Imputation Using Deep Denoising Autoencoders

Missing data is a well-recognized problem impacting all domains. State-o...
research
08/28/2020

PCB Defect Detection Using Denoising Convolutional Autoencoders

Printed Circuit boards (PCBs) are one of the most important stages in ma...
research
12/06/2017

Burst Denoising with Kernel Prediction Networks

We present a technique for jointly denoising bursts of images taken from...
research
06/06/2014

Analyzing noise in autoencoders and deep networks

Autoencoders have emerged as a useful framework for unsupervised learnin...
research
11/15/2015

Learning Representations of Affect from Speech

There has been a lot of prior work on representation learning for speech...
research
11/03/2018

Dynamic Feature Acquisition Using Denoising Autoencoders

In real-world scenarios, different features have different acquisition c...
research
06/19/2019

Generative approach to unsupervised deep local learning

Most existing feature learning methods optimize inflexible handcrafted f...

Please sign up or login with your details

Forgot password? Click here to reset