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.
翻译:我们提出一个新的系统来帮助事实审查者对已知的错误信息主张进行搜索查询,并在多个社交媒体平台上进行有效搜索。我们引入了适应性重写策略,通过这种策略,编辑行动(例如,用一个单词与其同义词互换;将动词时态转换为当前简单)自动通过离线强化学习来学习包含索赔主张的查询。具体地说,我们使用一个决策变压器来学习一系列编辑行动,以最大限度地提高查询检索指标,例如平均精确度。我们通过几个实验,表明我们的方法可以提高查询的实效,相对而言可以达到42 ⁇,同时生成人类可读的编辑动作序列,从而使系统易于使用和解释。