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Main Authors: Ganesan, Balaji, Pasha, Matheen Ahmed, Parkala, Srinivasa, Singh, Neeraj R, Mishra, Gayatri, Bhatia, Sumit, Patel, Hima, Naganna, Somashekar, Mehta, Sameep
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2403.09806
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author Ganesan, Balaji
Pasha, Matheen Ahmed
Parkala, Srinivasa
Singh, Neeraj R
Mishra, Gayatri
Bhatia, Sumit
Patel, Hima
Naganna, Somashekar
Mehta, Sameep
author_facet Ganesan, Balaji
Pasha, Matheen Ahmed
Parkala, Srinivasa
Singh, Neeraj R
Mishra, Gayatri
Bhatia, Sumit
Patel, Hima
Naganna, Somashekar
Mehta, Sameep
contents Explaining neural model predictions to users requires creativity. Especially in enterprise applications, where there are costs associated with users' time, and their trust in the model predictions is critical for adoption. For link prediction in master data management, we have built a number of explainability solutions drawing from research in interpretability, fact verification, path ranking, neuro-symbolic reasoning and self-explaining AI. In this demo, we present explanations for link prediction in a creative way, to allow users to choose explanations they are more comfortable with.
format Preprint
id arxiv_https___arxiv_org_abs_2403_09806
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle xLP: Explainable Link Prediction for Master Data Management
Ganesan, Balaji
Pasha, Matheen Ahmed
Parkala, Srinivasa
Singh, Neeraj R
Mishra, Gayatri
Bhatia, Sumit
Patel, Hima
Naganna, Somashekar
Mehta, Sameep
Artificial Intelligence
Explaining neural model predictions to users requires creativity. Especially in enterprise applications, where there are costs associated with users' time, and their trust in the model predictions is critical for adoption. For link prediction in master data management, we have built a number of explainability solutions drawing from research in interpretability, fact verification, path ranking, neuro-symbolic reasoning and self-explaining AI. In this demo, we present explanations for link prediction in a creative way, to allow users to choose explanations they are more comfortable with.
title xLP: Explainable Link Prediction for Master Data Management
topic Artificial Intelligence
url https://arxiv.org/abs/2403.09806