Reading Big Data by Machine Learning: The Used of Computer Science for Human Life

Hartono Subagio, Rismawati Sitepu
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Abstract

Machine learning (ML) models use big data to learn and improve predictability and performance automatically through experience and data, without being programmed to do so by humans. Artificial Intelligence (AI) techniques are being increasingly deployed in finance, in areas such as asset management, algorithmic trading, credit underwriting or blockchain-based finance, enabled by the abundance of available data and by affordable computing capacity. The purpose of this study is to describe in detail how the power of artificial intelligence with its complex system can help the needs of digital technology in the banking sector. The research method used is the elaboration of great thoughts and facts about artificial intelligence. Scientific data is interpreted with analytical power that is as precise as possible, so as to produce a description that meets the logic of structured thinking. The data is taken from relevant and up-to-date literature, the work of scientists who have been disseminated in various weighty scientific publications at the world level. The report can help policy makers to assess the implications of these new technologies and to identify the benefits and risks related to their use. It suggests policy responses that that are intended to support AI innovation in finance while ensuring that its use is consistent with promoting financial stability, market integrity and competition, while protecting financial consumers. Emerging risks from the deployment of AI techniques need to be identified and mitigated to support and promote the use of responsible AI. Existing regulatory and supervisory requirements may need to be clarified and sometimes adjusted, as appropriate, to address some of the perceived incompatibilities of existing arrangements with AI applications.
通过机器学习阅读大数据:计算机科学在人类生活中的应用
机器学习(ML)模型使用大数据通过经验和数据自动学习和提高可预测性和性能,而无需人为编程。人工智能(AI)技术正越来越多地应用于金融领域,如资产管理、算法交易、信贷承销或基于区块链的金融等领域,这得益于丰富的可用数据和负担得起的计算能力。本研究的目的是详细描述人工智能及其复杂系统的力量如何帮助银行业满足数字技术的需求。所使用的研究方法是阐述关于人工智能的伟大思想和事实。科学数据是用尽可能精确的分析能力来解释的,以便产生符合结构化思维逻辑的描述。这些数据摘自有关的最新文献,即在世界一级各种重要科学出版物上传播的科学家的工作。该报告可以帮助决策者评估这些新技术的影响,并确定与使用这些技术有关的利益和风险。它提出了旨在支持金融领域人工智能创新的政策回应,同时确保其使用与促进金融稳定、市场诚信和竞争相一致,同时保护金融消费者。需要识别和减轻部署人工智能技术带来的新风险,以支持和促进负责任的人工智能的使用。现有的管理和监督要求可能需要澄清,有时需要适当调整,以解决现有安排与人工智能应用程序的一些不兼容问题。
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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