Skip to content
RDL
Network
Ekosistem
Uygulama değiştir
EN
Hakkımızda
SSS
Giriş yap
Başla
Using an explainable machine learning approach to prioritize factors contributing to healthcare professionals’ burnout — Malvika Pillai (2024) | RDL Network
Back
Cite
Save
Save for later
Share
Home
Publications
Using an explainable machine learning approach to prioritize factors contributing to healthcare professionals’ burnout
KA
Shared by
Karthik Adapa
Using an explainable machine learning approach to prioritize factors contributing to healthcare professionals’ burnout
Article
2024
en
Authors
+4 more
MP
Malvika Pillai
CL
Chao Liu
EK
Elizabeth Kwong
Discussion
(0)
Sign in
to like and join the discussion.
No comments yet. Be the first to comment.
Related publications
Article
2022
Using Explainable Supervised Machine Learning to Predict Burnout in Healthcare Professionals
Karthik Adapa
,
Malvika Pillai
,
Meagan Foster
,
Nadia Charguia
,
Łukasz Mazur
Chapter in a book
2022
An Interpretable Machine Learning Approach to Prioritizing Factors Contributing to Clinician Burnout
Malvika Pillai
,
Karthik Adapa
,
Meagan Foster
,
Ian M. Kratzke
,
Nadia Charguia
,
Łukasz Mazur
Article
2022
Predicting Objective Performance Using Perceived Cognitive Workload Data in Healthcare Professionals: A Machine Learning Study
Karthik Adapa
,
Malvika Pillai
,
Shiva K. Das
,
Prithima Mosaly
,
Łukasz Mazur
Article
2022
Review of explainable machine learning for anaerobic digestion
Rohit Gupta
,
Le Zhang
,
Jiayi Hou
,
Zhikai Zhang
,
Hongtao Liu
,
Siming You
,
Yong Sik Ok
,
Wangliang Li
Article
2022
Explainable machine learning for chronic lymphocytic leukemia treatment prediction using only inexpensive tests
Amiel Meiseles
,
Denis Paley
,
Mira Ziv
,
Yarin Hadid
,
Lior Rokach
,
Tamar Tadmor
Computers in Biology and Medicine
Discussion(0)
No comments yet. Be the first to comment.