PAM: Cultivate a Novel LSTM Predictive analysis Model for The Behavior of Cryptocurrencies

Mona Mohamed, Mona Gharib
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Abstract

The popularity of cryptocurrencies has skyrocketed in the last several years due to the introduction of blockchain technology (BCT). Herein, we are navigating the intersection of sustainable market investment and cryptocurrency predictive analysis against the backdrop of a dynamic and evolving financial landscape marked by the surge of digital assets. This study's goal is to construct the predictive analysis model (PAM) which incorporates Long Short-Term Memory (LSTM) capabilities to predict the price of Bitcoin with high accuracy the next day and to identify the variables that influence price. In constructed PAM, we are using a comprehensive methodology to study temporal correlations within minute-by-minute bitcoin data using preprocessing, sophisticated machine learning algorithms, and data exploration. Our findings demonstrate the effectiveness of the LSTM model in forecasting bitcoin behavior, offering detailed information that is essential for long-term market investing.
PAM:为加密货币行为建立新颖的 LSTM 预测分析模型
过去几年,由于区块链技术(BCT)的引入,加密货币的受欢迎程度急剧上升。在此,我们以数字资产激增为标志的动态和不断演变的金融环境为背景,探索可持续市场投资和加密货币预测分析的交叉点。本研究的目标是构建预测分析模型(PAM),该模型结合了长短时记忆(LSTM)功能,可高精度预测比特币第二天的价格,并识别影响价格的变量。在构建 PAM 的过程中,我们采用了一种综合方法,利用预处理、复杂的机器学习算法和数据探索来研究每分钟比特币数据中的时间相关性。我们的研究结果证明了 LSTM 模型在预测比特币行为方面的有效性,并提供了对长期市场投资至关重要的详细信息。
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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