Advances in AI for web integrity, equity, and well-being

Author:

Kumar Srijan

Abstract

My research develops data mining, AI, and applied machine learning methods to combat malicious actors (sockpuppets, ban evaders, etc.) and dangerous content (misinformation, hate, etc.) on web platforms. My vision is to create a trustworthy online ecosystem for everyone and the next generation of socially-aware methods that promote health, equity, and integrity of users, communities, and platforms online. Broadly, in my research, I create novel graph, content (NLP, multimodality), and adversarial machine learning methods leveraging terabytes of data to detect, predict, and mitigate online threats. My interdisciplinary research innovates socio-technical solutions that I achieve by amalgamating computer science with social science theories. My research seeks to start a paradigm shift from the current slow and reactive approach against online harms to agile, proactive, and whole-of-society solutions. In this article, I shall describe my research efforts along four thrusts to achieve my goals: (1) Detection of harmful content and malicious actors across platforms, languages, and modalities; (2) Robust detection models against adversarial actors by predicting future malicious activities; (3) Attribution of the impact of harmful content in online and real world; and (4) Mitigation techniques to counter misinformation by professionals and non-expert crowds. Together, these thrusts give a set of holistic solutions to combat cyberharms. I am also passionate about putting my research into practice—my lab's models have been deployed on Flipkart, influenced Twitter's Birdwatch, and now being deployed on Wikipedia.

Publisher

Frontiers Media SA

Subject

Artificial Intelligence,Information Systems,Computer Science (miscellaneous)

Reference31 articles.

1. The bowling green massacre;Evans;J. Am. Folklore,2018

2. “User engagement with digital deception,”;Glenski,2020

3. “Petgen: personalized text generation attack on deep sequence embedding-based classification models,”;He;Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining

4. “Reinforcement learning-based counter-misinformation response generation: a case study of COVID-19 vaccine misinformation,”;He,2023

5. “Racism is a virus: anti-asian hate and counterspeech in social media during the COVID-19 crisis,”;He

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