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arxiv: 2412.19140 · v1 · pith:J6OVCM4C · submitted 2024-12-26 · cs.CL · cs.AI· cs.CE

SILC-EFSA: Self-aware In-context Learning Correction for Entity-level Financial Sentiment Analysis

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classification cs.CL cs.AIcs.CE
keywords analysissentimentdatasetscorrectiondataentity-levelfinancialconstructed
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In recent years, fine-grained sentiment analysis in finance has gained significant attention, but the scarcity of entity-level datasets remains a key challenge. To address this, we have constructed the largest English and Chinese financial entity-level sentiment analysis datasets to date. Building on this foundation, we propose a novel two-stage sentiment analysis approach called Self-aware In-context Learning Correction (SILC). The first stage involves fine-tuning a base large language model to generate pseudo-labeled data specific to our task. In the second stage, we train a correction model using a GNN-based example retriever, which is informed by the pseudo-labeled data. This two-stage strategy has allowed us to achieve state-of-the-art performance on the newly constructed datasets, advancing the field of financial sentiment analysis. In a case study, we demonstrate the enhanced practical utility of our data and methods in monitoring the cryptocurrency market. Our datasets and code are available at https://github.com/NLP-Bin/SILC-EFSA.

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