Stock Prediction Using Functional Link Artificial Neural Network (FLANN)

Abhinandan R. Gupta, D. K. Chaudhary, T. Choudhury
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引用次数: 10

Abstract

Stock exchange that is, buying and selling of stock is considered to be an important factor in the economy sector. The Stockbrokers typically use time series or technical analysis in predicting the stock price. These techniques are based on trends and not the actual stock value. Therefore a method of prediction which takes into account the historical values of stock is desired. Neural Networks once again have become famous for prediction of stock. This is due to their ability to deal with non-linear data. The use of Artificial Neural Networks to for predicting the stock prices is proposed in this paper. The input features to the model sometimes can be non-related to the output. Hence, Functional Link Artificial Neural Networks is used here to increase the number of related features in the form of inputs. The data is taken from NSE and is converted into a suitable form for FLANN and then prediction is carried out using Multi-layer feed forward Perceptron model.
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基于功能链接人工神经网络(FLANN)的库存预测
证券交易即买卖股票被认为是经济部门的一个重要因素。股票经纪人通常使用时间序列或技术分析来预测股票价格。这些技术是基于趋势,而不是实际的股票价值。因此,需要一种考虑到股票历史价值的预测方法。神经网络再次因预测股票而闻名。这是由于它们处理非线性数据的能力。本文提出了利用人工神经网络进行股票价格预测的方法。模型的输入特征有时可能与输出无关。因此,这里使用功能链接人工神经网络来增加输入形式的相关特征的数量。从NSE中提取数据,将其转换为适合FLANN的形式,然后使用多层前馈感知器模型进行预测。
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