0 references
Assisted Diagnosis Research Based on Improved Deep Autoencoder
ITM Web of Conferences2017Vol. 12, pp. 03043–03043
Abstract
Deep Autoencoder has the powerful ability to learn features from large number of unlabeled samples and a small number of labeled samples. In this work, we have improved the network structure of the general deep autoencoder and applied it to the disease auxiliary diagnosis. We have achieved a network by entering the specific indicators and predicting whether suffering from liver disease, the network using real physical examination data for training and verification. Compared with the traditional semi-supervised machine learning algorithm, deep autoencoder will get higher accuracy.
Related Papers
- → Performance Comparison of Three Types of Autoencoder Neural Networks(2008)28 cited
- → The Learning Effect of Different Hidden Layers Stacked Autoencoder(2016)20 cited
- → Combining an Autoencoder and a Variational Autoencoder for Explaining the Machine Learning Model Predictions(2021)5 cited
- → Assisted Diagnosis Research Based on Improved Deep Autoencoder(2017)
- → A Comparative Evaluation of AutoEncoder-Based Unsupervised Anomaly Detection Methods Applied on Space Payload(2020)