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Main Authors: Devabhakthini, Prathyusha, Parida, Sasmita, Shukla, Raj Mani, Nayak, Suvendu Chandan, Das, Tapadhir
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2307.08327
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author Devabhakthini, Prathyusha
Parida, Sasmita
Shukla, Raj Mani
Nayak, Suvendu Chandan
Das, Tapadhir
author_facet Devabhakthini, Prathyusha
Parida, Sasmita
Shukla, Raj Mani
Nayak, Suvendu Chandan
Das, Tapadhir
contents Adversarial attacks are a type of attack on machine learning models where an attacker deliberately modifies the inputs to cause the model to make incorrect predictions. Adversarial attacks can have serious consequences, particularly in applications such as autonomous vehicles, medical diagnosis, and security systems. Work on the vulnerability of deep learning models to adversarial attacks has shown that it is very easy to make samples that make a model predict things that it doesn't want to. In this work, we analyze the impact of model interpretability due to adversarial attacks on text classification problems. We develop an ML-based classification model for text data. Then, we introduce the adversarial perturbations on the text data to understand the classification performance after the attack. Subsequently, we analyze and interpret the model's explainability before and after the attack
format Preprint
id arxiv_https___arxiv_org_abs_2307_08327
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Analyzing the Impact of Adversarial Examples on Explainable Machine Learning
Devabhakthini, Prathyusha
Parida, Sasmita
Shukla, Raj Mani
Nayak, Suvendu Chandan
Das, Tapadhir
Machine Learning
Artificial Intelligence
Adversarial attacks are a type of attack on machine learning models where an attacker deliberately modifies the inputs to cause the model to make incorrect predictions. Adversarial attacks can have serious consequences, particularly in applications such as autonomous vehicles, medical diagnosis, and security systems. Work on the vulnerability of deep learning models to adversarial attacks has shown that it is very easy to make samples that make a model predict things that it doesn't want to. In this work, we analyze the impact of model interpretability due to adversarial attacks on text classification problems. We develop an ML-based classification model for text data. Then, we introduce the adversarial perturbations on the text data to understand the classification performance after the attack. Subsequently, we analyze and interpret the model's explainability before and after the attack
title Analyzing the Impact of Adversarial Examples on Explainable Machine Learning
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2307.08327