7,370 research outputs found
A Novel Framework for Robustness Analysis of Visual QA Models
Deep neural networks have been playing an essential role in many computer
vision tasks including Visual Question Answering (VQA). Until recently, the
study of their accuracy was the main focus of research but now there is a trend
toward assessing the robustness of these models against adversarial attacks by
evaluating their tolerance to varying noise levels. In VQA, adversarial attacks
can target the image and/or the proposed main question and yet there is a lack
of proper analysis of the later. In this work, we propose a flexible framework
that focuses on the language part of VQA that uses semantically relevant
questions, dubbed basic questions, acting as controllable noise to evaluate the
robustness of VQA models. We hypothesize that the level of noise is positively
correlated to the similarity of a basic question to the main question. Hence,
to apply noise on any given main question, we rank a pool of basic questions
based on their similarity by casting this ranking task as a LASSO optimization
problem. Then, we propose a novel robustness measure, R_score, and two
large-scale basic question datasets (BQDs) in order to standardize robustness
analysis for VQA models.Comment: Accepted by the Thirty-Third AAAI Conference on Artificial
Intelligence, (AAAI-19), as an oral pape
Using Chinese Gigaword Corpus and Chinese Word Sketch in linguistic Research
PACLIC 20 / Wuhan, China / 1-3 November, 200
The Polysemy of Da3: An ontology-based lexical semantic study
PACLIC 21 / Seoul National University, Seoul, Korea / November 1-3, 200
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