使用机器学习和知识图的加密货币和相关交易所分析

S. S, Harshini Karthikeyan Aiyyer, Aditi Manthripragada
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引用次数: 0

摘要

数据科学的目标是发现原始数据中隐藏的模式。这在讨论股票市场时特别有用。加密货币席卷世界的方式是20年前无法预测的。对于比特币等加密货币,似乎没有实施常规的市场指标。加密货币似乎也避开了通货膨胀。分析师要对这些实体进行分析,有无数的工具。一个例子是知识图,它是对象、事件或概念的相互关联描述的集合。它通过链接和语义元数据将数据置于上下文中。许多交易和金融网站上的历史数据使分析师和爱好者能够尝试机器学习和深度学习算法来预测该市场的后续性质。本文总结和分析了所有可能的算法,以准备有关货币状态的寿命和波动性的可用数据。将所有相关信息连接在一起的知识图与uml风格的本体图一起物化,以帮助和支持从知识表示模型中进行适当的推理。
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Cryptocurrency and Associated Bourse Analysis using Machine Learning and Knowledge Graphs
Data science has a goal to discover hidden patterns in raw data. This is exceptionally useful when discussing the stock market. The way crypto currency has taken over the world is something that wasn't predicted 20 years ago. It seems that regular market indicators aren't being implemented in the case of crypto currencies such as bit coin. Crypto currency seems to evade inflation as well. For analysts to perform analyses on these entities there are umpteen tools. One instance is the knowledge graph, which is a collection of interlinked descriptions of objects, events, or concepts. It puts data in context through linking and semantic metadata. Historical data present across many trading and finance websites enable analysts and enthusiasts to try machine learning and deep learning algorithms to predict the subsequent nature of that market. The paper has summarized and analyzed all the possible algorithms to prepare the data available regarding the lifetime and volatility of a currency state. A knowledge graph linking all the related information was also materialized along with a UML-style ontological graph is done to aid and support proper inference from the knowledge representation model.
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