加密货币中情绪驱动统计因果关系的链上分析

I. Chalkiadakis, Anna Zaremba, G. Peters, M. Chantler
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引用次数: 3

摘要

本文建立了一个新的框架,用于评估加密货币市场(cryptommarket)情绪与加密货币价格过程之间的多模态统计因果关系。为了实现这一目标,我们提出了一种基于多输出高斯过程的多模态统计因果分析算法。将来自不同信息源(模态)的信号联合建模为一个多输出高斯过程,然后采用一种基于高斯过程(GP)的统计因果关系的新方法,研究了不同模态之间的线性和非线性因果关系。我们在一个机器学习应用程序中证明了我们的方法的有效性,该应用程序研究了加密货币现货价格动态与特定于加密行业的情绪时间序列数据之间的关系,我们推测这会影响散户投资者的行为。投资者情绪通过被称为自然语言处理(NLP)的统计机器学习领域开发的方法从加密市场新闻数据中提取出来。为了捕获情感,我们提出了一种新的文本到时间序列嵌入框架,然后我们使用该框架从公开可用的新闻文章中构建情感指数。我们对我们的情绪统计指数模型进行了统计分析,并将其与NLP文献中流行的其他最先进的情绪模型进行了比较。关于多模态因果关系,除了价格和区块链技术相关指标(哈希率)外,投资者情绪是我们探索的主要模式。分析表明,我们的方法在模拟异构数据源之间不同复杂程度的因果结构方面是有效的,并说明了不同模式的某些建模选择对检测因果关系的影响。要衡量散户投资者对加密货币的接受程度,并提供有关加密货币市场动态的基于情绪和技术的见解,有必要对这些因素有一个深入的了解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On-chain Analytics for Sentiment-driven Statistical Causality in Cryptocurrencies
This paper establishes a new framework for assessing multimodal statistical causality between cryptocurrency market (cryptomarket) sentiment and cryptocurrency price processes. In order to achieve this we present an efficient algorithm for multimodal statistical causality analysis based on Multiple-Output Gaussian Processes. Signals from different information sources (modalities) are jointly modelled as a Multiple-Output Gaussian Process, and then using a novel approach to statistical causality based on Gaussian Processes (GP), we study linear and non-linear causal effects between the different modalities. We demonstrate the effectiveness of our approach in a machine learning application studying the relationship between cryptocurrency spot price dynamics and sentiment time-series data specific to the crypto sector, which we conjecture influences retail investor behaviour. The investor sentiment is extracted from cryptomarket news data via methods developed in the area of statistical machine learning known as Natural Language Processing (NLP). To capture sentiment, we present a novel framework for text to time-series embedding, which we then use to construct a sentiment index from publicly available news articles. We conduct a statistical analysis of our sentiment statistical index model and compare it to alternative state-of-the-art sentiment models popular in the NLP literature. In regards to the multimodal causality, the investor sentiment is our primary modality of exploration, in addition to price and a blockchain technology-related indicator (hash rate). Analysis shows that our approach is effective in modelling causal structures of variable degree of complexity between heterogeneous data sources, and illustrates the impact that certain modelling choices for the different modalities can have on detecting causality. A solid understanding of these factors is necessary to gauge cryptocurrency adoption by retail investors and provide sentiment- and technology-based insights about the cryptocurrency market dynamics.
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