Optimization of Quantitative Investment Strategies in the Financial Big Data Environment

Jinhong Wang
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Abstract

With the rapid progress of technology, the financial field is rapidly shifting towards a data-driven environment, with "financial big data" becoming its core component. This transformation has brought about profound changes in the financial market, especially with a significant impact on algorithmic quantitative investment strategies. This article delves into the optimization of quantitative investment strategies in the financial big data environment, analyzes how the characteristics of big data affect quantitative investment, and how to utilize these characteristics to optimize investment strategies. The article first outlines the definition, characteristics, and sources of financial big data, with a focus on describing its core characteristics such as capacity, speed, diversity, and authenticity. This article highlights the application of machine learning and deep learning in financial analysis, as well as the new perspective provided by unstructured data for quantitative strategies. Finally, the conclusion section of the article summarizes the opportunities and challenges brought by the integration of financial big data and quantitative strategies, calling on financial institutions and investors to have a deeper understanding and utilization of these two major trends.
优化金融大数据环境下的量化投资策略
随着技术的飞速发展,金融领域正迅速向数据驱动型环境转变,"金融大数据 "成为其核心组成部分。这种转变给金融市场带来了深刻的变化,尤其是对算法量化投资策略产生了重大影响。本文将深入探讨金融大数据环境下量化投资策略的优化问题,分析大数据的特性如何影响量化投资,以及如何利用这些特性优化投资策略。文章首先概述了金融大数据的定义、特征和来源,重点描述了金融大数据的核心特征,如容量、速度、多样性和真实性。文章重点介绍了机器学习和深度学习在金融分析中的应用,以及非结构化数据为量化策略提供的新视角。最后,文章的结论部分总结了金融大数据与量化策略融合带来的机遇和挑战,呼吁金融机构和投资者深入理解和利用这两大趋势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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