AI RESEARCH
What You Read is What You Classify: Highlighting Attributions to Text and Text-Like Inputs
arXiv CS.LG
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ArXi:2602.24149v2 Announce Type: replace At present, there are no easily understood explainable artificial intelligence (AI) methods for discrete token inputs, like text. Most explainable AI techniques do not extend well to token sequences, where both local and global features matter, because state-of-the-art models, like transformers, tend to focus on global connections. Therefore, existing explainable AI algorithms fail by (i) identifying disparate tokens of importance, or (ii) assigning a large number of tokens a low value of importance.