arXiv Open Access 2022

Towards mapping the contemporary art world with ArtLM: an art-specific NLP model

Qinkai Chen Mohamed El-Mennaoui Antoine Fosset Amine Rebei Haoyang Cao +4 lainnya
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Abstrak

With an increasing amount of data in the art world, discovering artists and artworks suitable to collectors' tastes becomes a challenge. It is no longer enough to use visual information, as contextual information about the artist has become just as important in contemporary art. In this work, we present a generic Natural Language Processing framework (called ArtLM) to discover the connections among contemporary artists based on their biographies. In this approach, we first continue to pre-train the existing general English language models with a large amount of unlabelled art-related data. We then fine-tune this new pre-trained model with our biography pair dataset manually annotated by a team of professionals in the art industry. With extensive experiments, we demonstrate that our ArtLM achieves 85.6% accuracy and 84.0% F1 score and outperforms other baseline models. We also provide a visualisation and a qualitative analysis of the artist network built from ArtLM's outputs.

Topik & Kata Kunci

Penulis (9)

Q

Qinkai Chen

M

Mohamed El-Mennaoui

A

Antoine Fosset

A

Amine Rebei

H

Haoyang Cao

P

Philine Bouscasse

C

Christy Eóin O'Beirne

S

Sasha Shevchenko

M

Mathieu Rosenbaum

Format Sitasi

Chen, Q., El-Mennaoui, M., Fosset, A., Rebei, A., Cao, H., Bouscasse, P. et al. (2022). Towards mapping the contemporary art world with ArtLM: an art-specific NLP model. https://arxiv.org/abs/2212.07127

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Tahun Terbit
2022
Bahasa
en
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arXiv
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Open Access ✓