Fine-tuning transformer models for M&A target prediction in the U.S. energy sector
Fecha
2025-04-09Estado
info:eu-repo/semantics/publishedVersionMetadatos
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. This study explores the application of transformer models directly for classification in predicting mergers and acquisitions (M&A) targets within the U.S. energy sector. The primary objective is to evaluate the capability and performance of various transformer-based models in directly predicting M&A target companies, while the secondary objective investigates the relationship between target companies and renewable energy terminology in their annual reports. We present a novel approach to predicting M&A targets by utilizing cutting-edge Natural Language Processing (NLP) techniques, such as fine-tuned transformer LLMs (Large Language Models) for direct classification. We analyze textual data from 200 publicly-listed US energy companies’ SEC-filings and employ FinBERT, ALBERT, and GPT-3-babage-002 as predictive models of M&A targets. We provide empirical evidence on LLMs’ capability in the direct classification of M&A target companies, with FinBERT utilizing oversampling, being the top-performing model due to its high precision and minimized false positives, critical for precise financial decision-making. Additionally, while the study revealed key differences in target and non-target report characteristics, it finds no significant evidence that M&A target companies use more renewable energy-related terminology. It is the first paper applying fine-tuned transformer-LLMs to predict M&A targets, effectively showcasing their capability for this task of direct classification as predictive models.
Fine-tuning transformer models for M&A target prediction in the U.S. energy sector
Tipo de Actividad
Artículos en revistasISSN
2331-1975Palabras Clave
.Mergers and acquisitions(M&a); renewable energy;takeover targetprediction; green M&a;natural languageprocessing (nlP);transformer models; largelanguage models (llM)