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arxiv: 2305.01028 · v2 · pith:5IYSV4M2 · submitted 2023-05-01 · cs.CL · cs.LG

Company classification using zero-shot learning

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classification cs.CL cs.LG
keywords classificationcompanyapproachlearningzero-shotcompaniesdatadescriptions
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In recent years, natural language processing (NLP) has become increasingly important in a variety of business applications, including sentiment analysis, text classification, and named entity recognition. In this paper, we propose an approach for company classification using NLP and zero-shot learning. Our method utilizes pre-trained transformer models to extract features from company descriptions, and then applies zero-shot learning to classify companies into relevant categories without the need for specific training data for each category. We evaluate our approach on a dataset obtained through the Wharton Research Data Services (WRDS), which comprises textual descriptions of publicly traded companies. We demonstrate that the approach can streamline the process of company classification, thereby reducing the time and resources required in traditional approaches such as the Global Industry Classification Standard (GICS). The results show that this method has potential for automation of company classification, making it a promising avenue for future research in this area.

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Cited by 1 Pith paper

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. MONETA: Multimodal Industry Classification through Geographic Information with Multi Agent Systems

    cs.AI 2026-04 unverdicted novelty 6.0

    MONETA is the first multimodal benchmark for industry classification using text and geographic sources, with MLLM baselines at 62-74% accuracy and up to 22.8% gains from multi-turn context enrichment and explanations.