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pro vyhledávání: '"Chiradeep Roy"'
Autor:
Chiradeep Roy, Mahsan Nourani, Donald R. Honeycutt, Jeremy E. Block, Tahrima Rahman, Eric D. Ragan, Nicholas Ruozzi, Vibhav Gogate
Publikováno v:
Applied AI Letters, Vol 2, Iss 4, Pp n/a-n/a (2021)
Abstract We consider the following activity recognition task: given a video, infer the set of activities being performed in the video and assign each frame to an activity. This task can be solved using modern deep learning architectures based on neur
Externí odkaz:
https://doaj.org/article/56000094290e49ed902d912c15a5afec
Autor:
Mahsan Nourani, Chiradeep Roy, Jeremy E. Block, Donald R. Honeycutt, Tahrima Rahman, Eric D. Ragan, Vibhav Gogate
Publikováno v:
ACM Transactions on Interactive Intelligent Systems. 12:1-29
While EXplainable Artificial Intelligence (XAI) approaches aim to improve human-AI collaborative decision-making by improving model transparency and mental model formations, experiential factors associated with human users can cause challenges in way
DETOXER: A Visual Debugging Tool With Multiscope Explanations for Temporal Multilabel Classification
Publikováno v:
IEEE Computer Graphics and Applications. 42:37-46
In many applications, developed deep learning models need to be iteratively debugged and refined to improve the model efficiency over time. Debugging some models, like Temporal Multi-Label Classification (TMLC) where each datapoint can simultaneously
Autor:
Vibhav Gogate, Jeremy Block, Tahrima Rahman, Mahsan Nourani, Nicholas Ruozzi, Donald R. Honeycutt, Eric D. Ragan, Chiradeep Roy
Publikováno v:
Applied AI Letters, Vol 2, Iss 4, Pp n/a-n/a (2021)
We consider the following activity recognition task: given a video, infer the set of activities being performed in the video and assign each frame to an activity. This task can be solved using modern deep learning architectures based on neural networ
Autor:
Tahrima Rahman, Mahsan Nourani, Vibhav Gogate, Donald R. Honeycutt, Jeremy E. Block, Eric D. Ragan, Chiradeep Roy
Publikováno v:
IUI
EXplainable Artificial Intelligence (XAI) approaches are used to bring transparency to machine learning and artificial intelligence models, and hence, improve the decision-making process for their end-users. While these methods aim to improve human u
Investigating the Importance of First Impressions and Explainable AI with Interactive Video Analysis
Autor:
Jeremy E. Block, Vibhav Gogate, Tahrima Rahman, Mahsan Nourani, Chiradeep Roy, Donald R. Honeycutt, Eric D. Ragan
Publikováno v:
CHI Extended Abstracts
We present research on how the perception of intelligent systems can be influenced by early experiences of machine performance, and how explainability potentially helps users develop an accurate understanding of system capabilities. Using a custom vi