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EXSEQREG: Explaining sequence-based NLP tasks with regions with a case study using morphological features for named entity recognition
2020
PLoS ONE
The state-of-the-art systems for most natural language engineering tasks employ machine learning methods. Despite the improved performances of these systems, there is a lack of established methods for assessing the quality of their predictions. This work introduces a method for explaining the predictions of any sequence-based natural language processing (NLP) task implemented with any model, neural or non-neural. Our method named EXSEQREG introduces the concept of region that links the
doi:10.1371/journal.pone.0244179
pmid:33378340
fatcat:rcsr7bwn7fgjnozds5nzlkdot4