Penerapan最小二乘支持向量机(LSSVM)

Andri Triyono, Rahmawan Bagus Trianto, Dhika Malita Puspita Arum
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引用次数: 0

摘要

在今天这样一个科技飞速发展的时代,互联网技术和计算机化使得各种公司机构或投资者开始考虑股票市场在他们资本分配中的重要性。以前公司的资金有各种购买,如:黄金,土地,建筑物,生产机器,但此时购买资本股份也应该开始引起人们的注意,这些购买是合法的投资。通过互联网已经可以看到出售的各种公司股票,对于将进行资本购买的公司来说非常容易和有吸引力,甚至可以选择长期和短期资本购买的模式。这种使用最小二乘支持向量机(LSSVM)方法的股价预测系统将非常受投资者欢迎,以帮助确定购买股票的结论,因为它可以减少损失,甚至做出正确的决定,从而增加投资者或公司的利润。最小二乘支持向量机是一种更简单的模型,它是在之前模型的基础上改进而来的,即支持向量机(SVM)方法。与使用支持向量机相比,使用LSSVM可以以更简单的方式求解线性方程。网络中使用的变量是收盘价变量。本研究使用的核是RBF核。这项研究包括三个阶段或阶段。第一阶段使用400行历史数据,第二阶段使用800行历史数据,第三阶段使用1200行数据。本研究在第三阶段获得了精度最好的结果。第三阶段使用1200行历史数据,MSE值最小:0.00025248。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Penerapan Least Squares Support Vector Machines (LSSVM) dalam Peramalan Indonesia Composite Index
In the era of very rapidly advancing technology like today, both internet technology and computerization have made various corporate agencies or investors start thinking about the importance of the stock market in their capital division. Previously there were various purchases by the company's capital, such: gold, land, buildings, production machines, but at this time the purchase of capital shares should also start to attract attention and these purchases are legal investments. Various kinds of company shares that are sold can already be seen through the internet and it is very easy and attractive for companies that will make capital purchases, even the model can be chosen for both long-term and short-term capital purchases. This stock price forecasting system using the Least Squares Support Vector Machines (LSSVM) method will be very popular with investors to help determine conclusions for buying shares because it can reduce losses or even make the right decisions so that it will increase profits for investors or companies. Least Squares Support Vector Machines is a simpler model and has been modified from the previous model, namely: Support Vector Machines (SVM) method. Solving linear equations can be solved in a simpler way using LSSVM compared to using SVM. The variable used in the network is the close price variable. The kernel that used for this study is the RBF kernel. This study consists of three phases or stages. The first stage uses 400 historical data rows, second stage uses 800 historical data rows, and the third stage uses 1200 rows of data. This research obtains the best result of accuracy in the third stage. The third stage has the smallest MSE value: 0.00025248 by using 1200 rows of historical data.
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