The Influence of Sentiments in Digital Currency Prediction Using Hybrid Sentiment-based Support Vector Machine with Whale Optimization Algorithm (SVMWOA)

Nor Azizah Hitam, A. R. Ismail, R. Samsudin, O. Ameerbakhsh
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Abstract

Getting an accurate prediction of a digital currency, also known as a cryptocurrency price index, becomes a significant factor in helping investors make the right decision. Failure to predict the movement of the crypto market gives a huge impact on profit loss. The difficult part is that market is dynamic in a way that is driven by many factors including inflation rate, economics, and natural calamities. This creates a chaos in the price of index so does the sentiment of the investor. This study proposes a machine learning model that applies a combination of sentiment-based support vector machine that is optimized by the whale optimization algorithm for predicting the daily price of a digital currency. Support Vector Machine (SVM) technique is used with the Whale Optimization Algorithm (WOA) which is inspired by the swarm optimization algorithms. The proposed Hybrid Sentiment-based Support Vector Machine with a Whale Optimization Algorithm (SVMWOA). will be evaluated and compared based on performance measures. The proposed method is compared with Support Vector Machine Optimized by Genetic Algorithm (SVMGA) and the Support Vector Machine Optimized by Harmony Search (SVMHS). The proposed model is found robust to be used in other fields of study.
基于情绪支持向量机和鲸鱼优化算法(SVMWOA)的情绪对数字货币预测的影响
对数字货币(也称为加密货币价格指数)进行准确预测,成为帮助投资者做出正确决策的重要因素。未能预测加密市场的走势会对利润损失产生巨大影响。困难的是,市场是动态的,受通货膨胀率、经济、自然灾害等多种因素的影响。这造成了指数价格的混乱,投资者的情绪也是如此。本研究提出了一种机器学习模型,该模型应用基于情绪的支持向量机的组合,该组合由鲸鱼优化算法优化,用于预测数字货币的每日价格。将支持向量机(SVM)技术与受群体优化算法启发的鲸鱼优化算法(WOA)相结合。提出了一种基于情感的鲸鱼优化算法混合支持向量机(SVMWOA)。将根据绩效指标进行评估和比较。将该方法与遗传算法优化的支持向量机(SVMGA)和和谐搜索优化的支持向量机(SVMHS)进行了比较。该模型具有较强的鲁棒性,可用于其他领域的研究。
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