Improving Quotation Attribution with Fictional Character Embeddings
Humans naturally attribute utterances of direct speech to their speaker in literary works. When attributing quotes, we process contextual information but also access mental representations of characters that we build and revise throughout the narrative. Recent methods to automatically attribute such...
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Zusammenfassung: | Humans naturally attribute utterances of direct speech to their speaker in
literary works. When attributing quotes, we process contextual information but
also access mental representations of characters that we build and revise
throughout the narrative. Recent methods to automatically attribute such
utterances have explored simulating human logic with deterministic rules or
learning new implicit rules with neural networks when processing contextual
information. However, these systems inherently lack \textit{character}
representations, which often leads to errors in more challenging examples of
attribution: anaphoric and implicit quotes. In this work, we propose to augment
a popular quotation attribution system, BookNLP, with character embeddings that
encode global stylistic information of characters derived from an off-the-shelf
stylometric model, Universal Authorship Representation (UAR). We create DramaCV
(Code and data can be found at
https://github.com/deezer/character_embeddings_qa ), a corpus of English drama
plays from the 15th to 20th century that we automatically annotate for
Authorship Verification of fictional characters utterances, and release two
versions of UAR trained on DramaCV, that are tailored for literary characters
analysis. Then, through an extensive evaluation on 28 novels, we show that
combining BookNLP's contextual information with our proposed global character
embeddings improves the identification of speakers for anaphoric and implicit
quotes, reaching state-of-the-art performance. |
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DOI: | 10.48550/arxiv.2406.11368 |