Adaptable Claim Rewriting with Offline Reinforcement Learning for Effective Misinformation Discovery

10/14/2022
by   Ashkan Kazemi, et al.
2

We propose a novel system to help fact-checkers formulate search queries for known misinformation claims and effectively search across multiple social media platforms. We introduce an adaptable rewriting strategy, where editing actions (e.g., swap a word with its synonym; change verb tense into present simple) for queries containing claims are automatically learned through offline reinforcement learning. Specifically, we use a decision transformer to learn a sequence of editing actions that maximize query retrieval metrics such as mean average precision. Through several experiments, we show that our approach can increase the effectiveness of the queries by up to 42% relatively, while producing editing action sequences that are human readable, thus making the system easy to use and explain.

READ FULL TEXT
research
11/22/2022

Converge to the Truth: Factual Error Correction via Iterative Constrained Editing

Given a possibly false claim sentence, how can we automatically correct ...
research
09/10/2022

Harnessing Abstractive Summarization for Fact-Checked Claim Detection

Social media platforms have become new battlegrounds for anti-social ele...
research
11/15/2021

Exploiting Action Impact Regularity and Partially Known Models for Offline Reinforcement Learning

Offline reinforcement learning-learning a policy from a batch of data-is...
research
12/09/2020

Interactive Search Based on Deep Reinforcement Learning

With the continuous development of machine learning technology, major e-...
research
07/21/2020

Check_square at CheckThat! 2020: Claim Detection in Social Media via Fusion of Transformer and Syntactic Features

In this digital age of news consumption, a news reader has the ability t...
research
09/01/2021

Boosting Search Engines with Interactive Agents

Can machines learn to use a search engine as an interactive tool for fin...
research
11/21/2022

TEMPERA: Test-Time Prompting via Reinforcement Learning

Careful prompt design is critical to the use of large language models in...

Please sign up or login with your details

Forgot password? Click here to reset