加强金融情绪分析:深入探讨自然语言处理在市场预测行业中的应用

Dattatray G. Takale
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引用次数: 0

摘要

本研究的目的是通过深入研究自然语言处理(NLP)方法来加强金融情感分析,从而改进市场预测。本研究的目的是调查自然语言处理 (NLP) 在提高情感分析的准确性和效率方面的潜力。这是为了应对金融市场的复杂结构和情绪所起的关键作用。对相关文献的研究凸显了传统方法的局限性,以及在金融情感研究领域对创造性解决方案的迫切需求。我们采用的方法需要仔细收集来自社交媒体和财经新闻的数据,并特别强调利用强大的预处理工具。研究通过使用情感分析算法、命名实体识别和深度学习模型等自然语言处理(NLP)技术,对准确度、精确度、召回率以及与市场趋势的相关性等性能参数进行了评估。研究结果包括对传统方法和基于自然语言处理(NLP)的方法进行比较研究,从而揭示了情感对市场模式的重大影响。研究结果不仅为情感研究的理论知识做出了贡献,还为金融分析师带来了实际影响,他们希望做出更准确、更及时的市场预测。研究提出了改进方法,重点是加强预处理和可解释的人工智能整合。提出这些策略是为了解决数据质量和偏差问题。展望未来,本研究概述了未来的潜在发展道路,其中包括调查外部影响因素和开发深度学习模型,分别用于准确的市场预测。综上所述,本研究的结论将自然语言处理(NLP)确立为重新定义金融情感分析过程中的革命性力量。此外,它还为瞬息万变的市场预测领域提供了一条未来发展之路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing Financial Sentiment Analysis: A Deep Dive into Natural Language Processing for Market Prediction Industries
The purpose of this study is to investigate the enhancement of Financial Sentiment Analysis by conducting an in-depth investigation of Natural Language Processing (NLP) approaches for the purpose of improving market prediction. The purpose of this research is to investigate the potential of natural language processing (NLP) to improve the accuracy and efficiency of sentiment analysis. This is in response to the complex structure of financial markets and the crucial role that sentiment plays. The examination of the relevant literature highlights the limits of traditional methods and the urgent need for creative solutions in the field of financial sentiment research. The approach that we use entails the careful collecting of data from social media and financial news, with a particular emphasis on the utilization of strong pre-processing tools. The research assesses the performance parameters of accuracy, precision, recall, and correlation with market trends by using natural language processing (NLP) technologies such as algorithms for sentiment analysis, Named Entity Recognition, and deep learning models. The findings include a comparative examination of conventional methods and those based on natural language processing (NLP), therefore revealing insights into the significant influence that sentiment has on market patterns. The results not only provide a contribution to the theoretical knowledge of sentiment research, but they also offer real consequences for financial analysts who are looking to make market forecasts that are more accurate and timelier. The research suggests ways for refinement, with an emphasis on enhanced pre-processing and Explainable AI integration. These tactics are being proposed to address issues in data quality and bias. When looking to the future, the study provides an overview of potential future paths, which include the investigation of external influences and the development of deep learning models for accurate market forecasting respectively. To summaries, the findings of this research establish natural language processing (NLP) as a revolutionary force in the process of redefining financial sentiment analysis. Furthermore, it offers a path for future developments in the ever-changing world of market prediction.
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