Check-worthiness detection is the task of identifying claims, worthy to be investigated by fact-checkers. Resource scarcity for non-world languages and model learning costs remain major challenges for the creation of models supporting multilingual check-worthiness detection. This paper proposes cross-training adapters on a subset of world languages, combined by adapter fusion, to detect claims emerging globally in multiple languages. (1) With a vast number of annotators available for world languages and the storage-efficient adapter models, this approach is more cost efficient. Models can be updated more frequently and thus stay up-to-date. (2) Adapter fusion provides insights and allows for interpretation regarding the influence of each adapter model on a particular language. The proposed solution often outperformed the top multilingual approaches in our benchmark tasks.
翻译:检验可靠性是查明值得事实核查者调查的索赔的任务,非世界语言资源短缺和示范学习费用仍然是建立支持多语言检验的模型的主要挑战,本文件提议对一组世界语言的适应者进行交叉培训,同时采用调适器聚合,以多种语言探测全球新出现的索赔。 (1) 在世界语言和储存高效调适模型方面有大量通知员,这一方法更具有成本效益,可以更经常地更新模型,从而不断更新。 (2) 调适器集成可提供洞察力,并使人们能够解释每种调适器模型对特定语言的影响,拟议的解决办法往往超过我们基准任务中最先进的多语言方法。