基于ML模型的股票市场投资决策分析

Akshat Singh, Virrat Devaser
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摘要

为了增加利润,投资者利用经纪人和专家提供的买卖建议。当经纪人或软件试图预测股价时,通常会在预测中出错。市场上股票的价值可以由多种方法确定,这些方法统称为估值技术。因此,如果你想进行投资,找到能够提供最准确的股价预测的估值方法是非常重要的。虽然有很多困难的财务指标,股市的波动也相当剧烈,但随着技术的进步,从股市中获得持续财富的机会越来越多,这也有助于金融专业人士做出更准确的预测。股票市场因其波动性、动态性和非线性而臭名昭著。由于各种因素,包括政治、全球经济现状、意外事件和公司的财务业绩等,准确的股价预测是极其困难的。然而,这确实意味着有大量的数据需要筛选才能发现模式。世界上最新、最尖端、技术最先进的交易所是国家证券交易所。本文简要总结了最近在股票市场预测方面进行的几项研究。它将帮助我们决定如何着手开发一种模式,使投资者能够从他们的投资中获得更大的回报。本文也将在确定未来研究中采用的最优模型中发挥至关重要的作用,这将产生重大影响。
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Analysis For Stock Market Investment Decision Using ML Models
For the purpose of increasing their profits, investors are taking advantage of the buy and sell advice offered by brokers and experts. When brokers or software try to forecast the share price, mistakes are typically made in the projection. The worth of stocks on the market may be determined by a variety of approaches, which are together referred to as valuation techniques. Therefore, if you want to make an investment, it is quite important to locate the valuation methods that provide the most accurate predictions of share prices. Although there are a lot of difficult financial indications and the fluctuations of the stock market are quite violent, the chance to generate a consistent fortune from the stock market is increasing as technology advances, and it also helps financial professionals make more accurate predictions. The stock market is notorious for its volatility, dynamism, and non-linearity. Accurate stock price forecasting is extremely difficult due to a variety of factors including politics, the current state of the global economy, unexpected events, and the financial performance of a company, amongst others. However, this does imply that there is a significant quantity of data to sift through in order to uncover patterns. The newest, most cutting-edge, most technologically advanced exchange in the world is the National Stock Exchange. This paper provides a concise summary of several recent studies carried out in the subject of stock market prediction. It will assist us in determining how to go about developing a model that would enable investors to make greater returns on their investments. This article will also play an essential part in determining the optimal model to adopt in future research, which will play a role that will have a significant impact.
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