Speaker-aware Hierarchical Transformer for Personality Recognition in Multiparty Dialogues
Wenjing Han (South China University of Technology); Yirong Chen (South China University of Technology); Xiaofen Xing ( South China University of Technology); Guohua Zhou (iFlytek South China AI Institute(Guangzhou) Co.,Ltd ); Xiangmin Xu (South China University of Technology)
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Personality recognition is one of the core technologies in
human-machine interaction, which has received increasing
attention. Previous works mainly focus on essays or monologues, while personality traits reveal more in the interactions
with others. Due to the lack of appropriate datasets, a few
approaches aim to recognize personality traits in conversations, and most of them ignore interdependence between
speakers and connection between conversations. In this paper, we create a multiparty dialogue-based personality dataset
derived from CPED containing 1,195 data samples. We center on one speaker and extract related dialogues to compose
each data sample annotated with speaker’s Big-Five traits,
which is conducive to fully describe a center speaker using
diverse cues of personality in different dialogues. Along the
same lines, we propose a Speaker-aware Hierarchical Transformer named SH-Transformer to address above concerns, in
which Personalized Embeddings (PE) adopt special tokens to
distinguish center speakers in complete conversations and hierarchical Transformer capture diverse cues in utterances and
conversations. Experimental results show that our method
outperforms the non-interactive baseline by 1.38%, which
confirms the necessity of considering both interactive information and diverse cues among dialogues. Our code will be
released at github.com/Chloehxxx/SH-Transformer.