Search Results for author: Sina Mohseni

Found 10 papers, 3 papers with code

Taxonomy of Machine Learning Safety: A Survey and Primer

no code implementations9 Jun 2021 Sina Mohseni, Haotao Wang, Zhiding Yu, Chaowei Xiao, Zhangyang Wang, Jay Yadawa

The open-world deployment of Machine Learning (ML) algorithms in safety-critical applications such as autonomous vehicles needs to address a variety of ML vulnerabilities such as interpretability, verifiability, and performance limitations.

Autonomous Vehicles BIG-bench Machine Learning +1

Shifting Transformation Learning for Out-of-Distribution Detection

no code implementations7 Jun 2021 Sina Mohseni, Arash Vahdat, Jay Yadawa

In this paper, we propose a simple framework that leverages a shifting transformation learning setting for learning multiple shifted representations of the training set for improved OOD detection.

Anomaly Detection Contrastive Learning +3

XFake: Explainable Fake News Detector with Visualizations

no code implementations8 Jul 2019 Fan Yang, Shiva K. Pentyala, Sina Mohseni, Mengnan Du, Hao Yuan, Rhema Linder, Eric D. Ragan, Shuiwang Ji, Xia Hu

In this demo paper, we present the XFake system, an explainable fake news detector that assists end-users to identify news credibility.

Attribute

Predicting Model Failure using Saliency Maps in Autonomous Driving Systems

1 code implementation19 May 2019 Sina Mohseni, Akshay Jagadeesh, Zhangyang Wang

While machine learning systems show high success rate in many complex tasks, research shows they can also fail in very unexpected situations.

Autonomous Driving BIG-bench Machine Learning +1

Combating Fake News with Interpretable News Feed Algorithms

no code implementations29 Nov 2018 Sina Mohseni, Eric Ragan

Nowadays, artificial intelligence algorithms are used for targeted and personalized content distribution in the large scale as part of the intense competition for attention in the digital media environment.

Social and Information Networks Computers and Society

A Survey of Evaluation Methods and Measures for Interpretable Machine Learning

1 code implementation28 Nov 2018 Sina Mohseni, Niloofar Zarei, Eric D. Ragan

The need for interpretable and accountable intelligent system gets sensible as artificial intelligence plays more role in human life.

Human-Computer Interaction

A Human-Grounded Evaluation Benchmark for Local Explanations of Machine Learning

1 code implementation16 Jan 2018 Sina Mohseni, Jeremy E. Block, Eric D. Ragan

We demonstrate our benchmark's utility for quantitative evaluation of model explanations by comparing it with human subjective ratings and ground-truth single-layer segmentation masks evaluations.

BIG-bench Machine Learning Decision Making +3

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