Predicting Price Direction of Bitcoin based on Hybrid Model of LSTM and Dense Neural Network Approach

Dr Jai Kishan Karahyla, Neelam Sharma, Sushant Chamoli, Dr Anil Shirgire, Ravi Kant, Amit Chauhan
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Abstract

Bitcoin is a rapidly growing but extremely risky cryptocurrency. It marks a watershed moment in the history of cash. These days, digital currency is preferred to actual money. Bitcoin has decentralized authority and placed it in the hands of its users. Many people are joining the largest and most well-known Bitcoin mining pools as the risk of working alone is too great. In order to enhance their chances of creating the next block in the Bitcoins blockchain and decrease the mining reward volatility, users can band together to form Bitcoin pools. This tendency toward consolidation may also be seen in the rise of large-scale mining farms equipped with powerful mining resources and speedy processing capability. Because of the risk of a 51% assault, this pattern shows that Bitcoin’s pure, decentralized protocol is moving toward greater centralization in its distribution network. Not to be overlooked is the resulting centralization of the bitcoin network as a result of cloud wallets making it simple for new users to join. Because of the easily hackable nature of Bitcoin technologies, this could lead to a wide range of security vulnerabilities. The proposed approach uses normalization and filling missing values in preprocessing, PCA for feature Extraction and finally training the model using LSTM-DNN Models. The proposed approach outperforms other two models such as CNN and DNN.
基于LSTM和密集神经网络混合模型的比特币价格走势预测
比特币是一种快速增长但风险极高的加密货币。这标志着现金历史上的一个分水岭。如今,数字货币比实际货币更受欢迎。比特币具有去中心化的权力,并将其置于用户手中。许多人加入了最大和最知名的比特币矿池,因为独自工作的风险太大了。为了提高他们在比特币区块链中创建下一个区块的机会,并降低挖矿奖励的波动性,用户可以联合起来组成比特币池。这种整合趋势也可以从大型矿场的兴起中看到,这些矿场拥有强大的采矿资源和快速的处理能力。由于51%攻击的风险,这种模式表明比特币的纯粹,去中心化协议正在其分销网络中走向更大的中心化。不可忽视的是,由于云钱包使新用户加入变得简单,比特币网络的集中化。由于比特币技术很容易被黑客攻击,这可能会导致广泛的安全漏洞。该方法采用归一化和缺失值填充预处理,PCA进行特征提取,最后采用LSTM-DNN模型对模型进行训练。该方法优于CNN和DNN等其他两种模型。
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