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ProKnow: Process Knowledge for Safety Constrained and Explainable
  Question Generation for Mental Health Diagnostic Assistance

ProKnow: Process Knowledge for Safety Constrained and Explainable Question Generation for Mental Health Diagnostic Assistance

13 May 2023
Kaushik Roy
Manas Gaur
Misagh Soltani
Vipula Rawte
A. Kalyan
Amit P. Sheth
    AI4MH
ArXivPDFHTML

Papers citing "ProKnow: Process Knowledge for Safety Constrained and Explainable Question Generation for Mental Health Diagnostic Assistance"

15 / 15 papers shown
Title
Natural Language Generation in Healthcare: A Review of Methods and Applications
Natural Language Generation in Healthcare: A Review of Methods and Applications
Mengxian Lyu
Xiaohan Li
Ziyi Chen
Jinqian Pan
Cheng Peng
Sankalp Talankar
Yonghui Wu
LM&MA
36
0
0
07 May 2025
RDR: the Recap, Deliberate, and Respond Method for Enhanced Language
  Understanding
RDR: the Recap, Deliberate, and Respond Method for Enhanced Language Understanding
Yuxin Zi
Hariram Veeramani
Kaushik Roy
Amit P. Sheth
AI4TS
15
2
0
15 Dec 2023
Neurosymbolic Value-Inspired AI (Why, What, and How)
Neurosymbolic Value-Inspired AI (Why, What, and How)
Amit P. Sheth
Kaushik Roy
17
4
0
15 Dec 2023
A Cross Attention Approach to Diagnostic Explainability using Clinical
  Practice Guidelines for Depression
A Cross Attention Approach to Diagnostic Explainability using Clinical Practice Guidelines for Depression
Sumit Dalal
Deepa Tilwani
Kaushik Roy
Manas Gaur
Sarika Jain
V. Shalin
Amit P. Sheth
11
6
0
23 Nov 2023
Navigating Healthcare Insights: A Birds Eye View of Explainability with
  Knowledge Graphs
Navigating Healthcare Insights: A Birds Eye View of Explainability with Knowledge Graphs
Satvik Garg
Anh Nguyen
Somya Garg
17
2
0
28 Sep 2023
Minimum Levels of Interpretability for Artificial Moral Agents
Minimum Levels of Interpretability for Artificial Moral Agents
Avish Vijayaraghavan
C. Badea
AI4CE
22
5
0
02 Jul 2023
IERL: Interpretable Ensemble Representation Learning -- Combining
  CrowdSourced Knowledge and Distributed Semantic Representations
IERL: Interpretable Ensemble Representation Learning -- Combining CrowdSourced Knowledge and Distributed Semantic Representations
Yuxin Zi
Kaushik Roy
Vignesh Narayanan
Manas Gaur
Amit P. Sheth
17
8
0
24 Jun 2023
Knowledge-Infused Self Attention Transformers
Knowledge-Infused Self Attention Transformers
Kaushik Roy
Yuxin Zi
Vignesh Narayanan
Manas Gaur
Amit P. Sheth
KELM
11
7
0
23 Jun 2023
Process Knowledge-infused Learning for Clinician-friendly Explanations
Process Knowledge-infused Learning for Clinician-friendly Explanations
Kaushik Roy
Yuxin Zi
Manas Gaur
Jinendra Malekar
Qi Zhang
Vignesh Narayanan
Amit P. Sheth
AI4MH
14
14
0
16 Jun 2023
Neurosymbolic AI -- Why, What, and How
Neurosymbolic AI -- Why, What, and How
Ami N. Sheth
Kaushik Roy
Manas Gaur
NAI
28
14
0
01 May 2023
Towards Explainable and Safe Conversational Agents for Mental Health: A
  Survey
Towards Explainable and Safe Conversational Agents for Mental Health: A Survey
Surjodeep Sarkar
Manas Gaur
L. Chen
Muskan Garg
Biplav Srivastava
B. Dongaonkar
AI4MH
17
1
0
25 Apr 2023
Demo Alleviate: Demonstrating Artificial Intelligence Enabled Virtual
  Assistance for Telehealth: The Mental Health Case
Demo Alleviate: Demonstrating Artificial Intelligence Enabled Virtual Assistance for Telehealth: The Mental Health Case
Kaushik Roy
Vedant Khandelwal
Raxit Goswami
Nathan Dolbir
Jinendra Malekar
A. Sheth
AI4MH
11
15
0
31 Mar 2023
KSAT: Knowledge-infused Self Attention Transformer -- Integrating
  Multiple Domain-Specific Contexts
KSAT: Knowledge-infused Self Attention Transformer -- Integrating Multiple Domain-Specific Contexts
Kaushik Roy
Yuxin Zi
Vignesh Narayanan
Manas Gaur
Amit P. Sheth
AI4MH
14
12
0
09 Oct 2022
Semantics of the Black-Box: Can knowledge graphs help make deep learning
  systems more interpretable and explainable?
Semantics of the Black-Box: Can knowledge graphs help make deep learning systems more interpretable and explainable?
Manas Gaur
Keyur Faldu
A. Sheth
29
110
0
16 Oct 2020
GLUE: A Multi-Task Benchmark and Analysis Platform for Natural Language
  Understanding
GLUE: A Multi-Task Benchmark and Analysis Platform for Natural Language Understanding
Alex Jinpeng Wang
Amanpreet Singh
Julian Michael
Felix Hill
Omer Levy
Samuel R. Bowman
ELM
294
6,927
0
20 Apr 2018
1