Conformal Prediction in Learning Under Privileged Information Paradigm with Applications in Drug Discovery

03/29/2018
by   Niharika Gauraha, et al.
0

This paper explores conformal prediction in the learning under privileged information (LUPI) paradigm. We use the SVM+ realization of LUPI in an inductive conformal predictor, and apply it to the MNIST benchmark dataset and three datasets in drug discovery. The results show that using privileged information produces valid models and improves efficiency compared to standard SVM, however the improvement varies between the tested datasets and is not substantial in the drug discovery applications. More importantly, using SVM+ in a conformal prediction framework enables valid prediction intervals at specified significance levels.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/28/2022

Multi-View Substructure Learning for Drug-Drug Interaction Prediction

Drug-drug interaction (DDI) prediction provides a drug combination strat...
research
03/02/2022

CandidateDrug4Cancer: An Open Molecular Graph Learning Benchmark on Drug Discovery for Cancer

Anti-cancer drug discoveries have been serendipitous, we sought to prese...
research
04/17/2023

Empowering AI drug discovery with explicit and implicit knowledge

Motivation: Recently, research on independently utilizing either explici...
research
11/01/2017

Erratum: Link prediction in drug-target interactions network using similarity indices

Background: In silico drug-target interaction (DTI) prediction plays an ...
research
08/15/2019

Combining Prediction Intervals on Multi-Source Non-Disclosed Regression Datasets

Conformal Prediction is a framework that produces prediction intervals b...
research
03/23/2021

GA-SVM for Evaluating Heroin Consumption Risk

There were over 70,000 drug overdose deaths in the USA in 2017. Almost h...
research
10/05/2015

Relaxed Multiple-Instance SVM with Application to Object Discovery

Multiple-instance learning (MIL) has served as an important tool for a w...

Please sign up or login with your details

Forgot password? Click here to reset