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Autore principale: Atsiwo, Abraham
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.09859
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author Atsiwo, Abraham
author_facet Atsiwo, Abraham
contents The Efficient Market Hypothesis (EMH) highlights the essence of financial news in stock price movement. Financial news comes in the form of corporate announcements, news titles, and other forms of digital text. The generation of insights from financial news can be done with sentiment analysis. General-purpose language models are too general for sentiment analysis in finance. Curated labeled data for fine-tuning general-purpose language models are scare, and existing fine-tuned models for sentiment analysis in finance do not capture the maximum context width. We hypothesize that using actual and synthetic data can improve performance. We introduce BertNSP-finance to concatenate shorter financial sentences into longer financial sentences, and finbert-lc to determine sentiment from digital text. The results show improved performance on the accuracy and the f1 score for the financial phrasebank data with $50\%$ and $100\%$ agreement levels.
format Preprint
id arxiv_https___arxiv_org_abs_2412_09859
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Financial Sentiment Analysis: Leveraging Actual and Synthetic Data for Supervised Fine-tuning
Atsiwo, Abraham
Machine Learning
Computation and Language
The Efficient Market Hypothesis (EMH) highlights the essence of financial news in stock price movement. Financial news comes in the form of corporate announcements, news titles, and other forms of digital text. The generation of insights from financial news can be done with sentiment analysis. General-purpose language models are too general for sentiment analysis in finance. Curated labeled data for fine-tuning general-purpose language models are scare, and existing fine-tuned models for sentiment analysis in finance do not capture the maximum context width. We hypothesize that using actual and synthetic data can improve performance. We introduce BertNSP-finance to concatenate shorter financial sentences into longer financial sentences, and finbert-lc to determine sentiment from digital text. The results show improved performance on the accuracy and the f1 score for the financial phrasebank data with $50\%$ and $100\%$ agreement levels.
title Financial Sentiment Analysis: Leveraging Actual and Synthetic Data for Supervised Fine-tuning
topic Machine Learning
Computation and Language
url https://arxiv.org/abs/2412.09859