latent Dirichlet allocation method-based nowcasting approach for prediction of silver price

Q3 Pharmacology, Toxicology and Pharmaceutics
Accounting Pub Date : 2023-01-01 DOI:10.5267/j.ac.2023.3.004
Selin Özge Öndin, Tarik Küçükdeniz
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Abstract

Silver is a metal that offers significant value to both investors and companies. The purpose of this study is to make an estimation of the price of silver. While making this estimation, it is planned to include the frequency of searches on Google Trends for the words that affect the silver price. Thus, it is aimed to obtain a more accurate estimate. First, using the Latent Dirichlet Allocation method, the keywords to be analyzed in Google Trends were collected from various articles on the Internet. Mining data from Google Trends combined with the information obtained by LDA is the new approach this study took, to predict the price of silver. No study has been found in the literature that has adopted this approach to estimate the price of silver. The estimation was carried out with Random Forest Regression, Gaussian Process Regression, Support Vector Machine, Regression Trees and Artificial Neural Networks methods. In addition, ARIMA, which is one of the traditional methods that is widely used in time series analysis, was also used to benchmark the accuracy of the methodology. The best MSE ratio was obtained as 0,000227131 ± 0.0000235205 by the Regression Trees method. This score indicates that it would be a valid technique to estimate the price of "Silver" by using Google Trends data using the LDA method.
基于潜在狄利克雷分配法的临近预测银价预测方法
白银是一种对投资者和企业都具有重要价值的金属。本研究的目的是对银的价格进行估计。在进行这一估算时,计划将谷歌Trends上影响白银价格的词语的搜索频率纳入其中。因此,其目的是获得更准确的估计。首先,利用Latent Dirichlet Allocation方法,从网络上的各种文章中收集谷歌Trends中待分析的关键词。从谷歌Trends中挖掘数据,结合LDA获得的信息,是本研究预测银价的新方法。在文献中没有发现采用这种方法来估计银价的研究。采用随机森林回归、高斯过程回归、支持向量机、回归树和人工神经网络等方法进行估计。此外,还使用时间序列分析中广泛使用的传统方法之一ARIMA对方法的准确性进行了基准测试。采用回归树法得到的最佳MSE值为0.000227131±0.0000235205。这个分数表明,使用LDA方法使用谷歌趋势数据来估计“白银”的价格将是一种有效的技术。
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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来源期刊
Accounting
Accounting Pharmacology, Toxicology and Pharmaceutics-Pharmaceutical Science
自引率
0.00%
发文量
47
审稿时长
20 weeks
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