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Efficient Normalized Conformal Prediction and Uncertainty Quantification
  for Anti-Cancer Drug Sensitivity Prediction with Deep Regression Forests

Efficient Normalized Conformal Prediction and Uncertainty Quantification for Anti-Cancer Drug Sensitivity Prediction with Deep Regression Forests

21 February 2024
Daniel Nolte
Souparno Ghosh
R. Pal
ArXivPDFHTML

Papers citing "Efficient Normalized Conformal Prediction and Uncertainty Quantification for Anti-Cancer Drug Sensitivity Prediction with Deep Regression Forests"

6 / 6 papers shown
Title
A Survey of Neural Trees
A Survey of Neural Trees
Haoling Li
Mingli Song
Mengqi Xue
Haofei Zhang
Jingwen Ye
Lechao Cheng
Mingli Song
AI4CE
71
6
0
07 Sep 2022
Meta Ordinal Regression Forest for Medical Image Classification with
  Ordinal Labels
Meta Ordinal Regression Forest for Medical Image Classification with Ordinal Labels
Yiming Lei
Haiping Zhu
Junping Zhang
Hongming Shan
58
21
0
15 Mar 2022
A Gentle Introduction to Conformal Prediction and Distribution-Free
  Uncertainty Quantification
A Gentle Introduction to Conformal Prediction and Distribution-Free Uncertainty Quantification
Anastasios Nikolas Angelopoulos
Stephen Bates
OOD
164
615
0
15 Jul 2021
Self-Paced Deep Regression Forests with Consideration on
  Underrepresented Examples
Self-Paced Deep Regression Forests with Consideration on Underrepresented Examples
Lili Pan
Shijie Ai
Yazhou Ren
Zenglin Xu
29
16
0
03 Apr 2020
Deep Regression Forests for Age Estimation
Deep Regression Forests for Age Estimation
Wei Shen
Yilu Guo
Yan Wang
Kai Zhao
Bo Wang
Alan Yuille
CVBM
55
145
0
19 Dec 2017
Conditional validity of inductive conformal predictors
Conditional validity of inductive conformal predictors
V. Vovk
195
416
0
12 Sep 2012
1