A Survey on Stock Market Prediction

Mohit Iyer, Ritika Mehra
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引用次数: 13

Abstract

It is complicated to estimate the stock market where relations between input and output are random in nature. Predicting the cost of the share market is the most complex job of the financial time series. Forecasting of the stock should be possible by utilizing the present and past information available on the market. The execution measurements that should be achieved if there should be an occurrence of the stock forecast are exactness, adaptability and less time utilization. There are numerous sorts of research done as such far with the end goal to predict the stock market to complete the characterized measurements. Several techniques have been accessible in data mining for forecasting the stock market, for example, Fuzzy systems, Artificial Neural Network (ANN), if-then-else rules, Bayesian algorithm et cetera. In this paper, the different strategies are available and used for forecasting the stock markets are talked about. This review knows which method is the finest to use for predicting the stock market. The most important application of market share is to predict market trends. Likewise, the market shows the performance of the future, which constantly encourages financial experts to understand when and what shares can be purchased to improve their risk. For this reason, a large number of research has been prepared so far to analyze the stock market by means of mining of the data.
关于股票市场预测的调查
由于股票市场的投入和产出之间的关系是随机的,因此对股票市场的估计是复杂的。预测股票市场的成本是金融时间序列中最复杂的工作。利用市场上现有的和过去的信息对股票进行预测应该是可能的。如果发生库存预测,应达到的执行度量是准确性、适应性和较少的时间利用率。到目前为止,有许多类型的研究都是为了预测股票市场以完成特征测量。在预测股票市场的数据挖掘中,有几种技术可以使用,例如,模糊系统、人工神经网络(ANN)、if-then-else规则、贝叶斯算法等。本文讨论了股票市场预测的不同策略。这篇综述知道哪种方法最适合用于预测股票市场。市场份额最重要的应用是预测市场趋势。同样,市场显示了未来的表现,这不断鼓励金融专家了解何时以及购买哪些股票以提高风险。因此,迄今为止已经准备了大量的研究,通过数据挖掘来分析股票市场。
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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