Deep Dialog Act Recognition using Multiple Token, Segment, and Context Information Representations
Eug\'enio Ribeiro, Ricardo Ribeiro, and David Martins de Matos

TL;DR
This paper introduces a multi-level token and context representation approach for dialog act recognition, significantly improving accuracy by integrating word, character, and functional features along with dialog history.
Contribution
It proposes a novel combination of token, segment, and context representations, including contextualized embeddings and morphological features, to enhance dialog act recognition performance.
Findings
Surpasses previous state-of-the-art on SwDA and MRDA datasets.
Achieves human-level performance on SwDA.
Effectively utilizes both past and future context for disambiguation.
Abstract
Dialog act (DA) recognition is a task that has been widely explored over the years. Recently, most approaches to the task explored different DNN architectures to combine the representations of the words in a segment and generate a segment representation that provides cues for intention. In this study, we explore means to generate more informative segment representations, not only by exploring different network architectures, but also by considering different token representations, not only at the word level, but also at the character and functional levels. At the word level, in addition to the commonly used uncontextualized embeddings, we explore the use of contextualized representations, which provide information concerning word sense and segment structure. Character-level tokenization is important to capture intention-related morphological aspects that cannot be captured at the word…
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