AN EVALUATION OF ML TECHNIQUES ON NASDAQ DATASET FOR STOCK MARKET FORECASTING

Rakesh Kumar Mahapatro, Anooja Ali
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Abstract

The uncertainty of stock pricing has popularized stock market prediction as a common practice. Forecasting prices in the market are viewed as problematic, as the hypothesis of efficient markets (EMH) explains. According to the EMH, all accessible information is represented in market prices, and price variations are only the consequence of newly available information. The approach to prediction forecasts the market as either positive or negative based on a variety of input parameters. A combination of derived, fundamental, and pure technical data is utilized in stock forecasts to project future stock prices. Algorithms for machine learning (ML) are made to find patterns in data and utilize those patterns to forecast future events. K Nearest Neighbour (KNN) can process relationships between the numerical data, it is particularly effective in numerical prediction problems for predicting changes in stock value the following day. KNN categorizes freshly input data according to how similar it is to previously taught data, and it does this by clustering the data into coherence subsets or clusters. Using the KNN approach in conjunction with technical analysis, the closest neighbour search strategy yielded the desired outcome. KEYWORDS: Hypothesis, K Nearest Neighbour, Prediction, Stock prices,
在纳斯达克数据集上评估用于股市预测的毫微升技术
股票定价的不确定性使股市预测成为一种普遍做法。正如有效市场假说(EMH)所解释的那样,预测市场价格被认为是有问题的。根据 EMH 假设,所有可获取的信息都体现在市场价格中,价格变化只是新获取信息的结果。这种预测方法根据各种输入参数将市场预测为正面或负面。在股票预测中,综合利用衍生数据、基本面数据和纯技术数据来预测未来的股票价格。机器学习(ML)算法的目的是发现数据中的模式,并利用这些模式预测未来事件。K Nearest Neighbour(KNN)可以处理数字数据之间的关系,在预测第二天股票价值变化的数字预测问题中尤为有效。KNN 根据新输入数据与之前所学数据的相似程度对其进行分类,并通过将数据聚类为一致性子集或聚类来实现这一目的。将 KNN 方法与技术分析相结合,近邻搜索策略可获得理想的结果、
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