A Technical Indicator for a Short-term Trading Decision in the NASDAQ Market

Q2 Decision Sciences
Mohammed Bouasabah, Oshamah Ibrahim Khalaf
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引用次数: 0

Abstract

Purpose: The objective is to employ a stochastic model to develop a new technical analysis indicator that could compute the variation of any index. We demonstrate the superiority and applicability of our proposed model and show that our proposed indicator could help investors and market analysts to anticipate the market trend in the short term and make better trading decisions by using our proposed model to analyze the variation of the NASDAQ Composite Index (IXIC). Design/methodology/approach: This study uses a stochastic process without mean-reverting property to develop a stochastic model that could compute the variation of any index. To show the superiority and applicability of our proposed model in computing the variation of any index, we employ our proposed model to compute the daily closing values of the IXIC over 10 years and derive the variation of the IXIC index. Findings: Our findings indicate that, based on the mean absolute percentage error, the calibrated model we proposed provides a more accurate estimate of the short-term index that outperforms both the simple moving average and the MACD in predictive accuracy. It delivers a robust anticipation of the overall market trend by offering a 95% confidence interval for the value of the composite NASDAQ index. Practical Implications: Our proposed indicator could help investors and market analysts to anticipate the market trend in the short term and make better trading decisions. Our proposed model provides market analysts with a forecasting tool by using our proposed technical analysis indicator to anticipate the market trend, which outperforms some traditional indicators of technical analysis, including Simple Moving Averages and Moving Average Convergence Divergence. Originality/value: Our approach, results, and conclusions are original and new in the literature. Our proposed model is a new technical indicator for predicting any index based on a stochastic process, which has been found to outperform some classical indicators. This research makes significant contributions to the field of decision sciences because the indicator we have developed plays a crucial role. It enables better buying and selling decisions based on market trend predictions estimated by using our proposed model. In this way, the indicator offers added value to professionals in making investment decisions. The results of this research work contribute to the development of new technical analysis indicators. Here, the IXIC index is an example, the use of this indicator is wider and could concern any stock market index and any share. So, this work enriches the literature and opens up new avenues for any researcher who wants to use stochastic processes to develop new technical indicators for different financial assets.
纳斯达克市场短期交易决策的技术指标
目的:目的是利用随机模型开发一种新的技术分析指标,该指标可以计算任意指标的变化。通过对纳斯达克综合指数(NASDAQ Composite Index, IXIC)变化的分析,我们证明了所提出模型的优越性和适用性,并表明所提出的指标可以帮助投资者和市场分析师预测市场短期趋势,做出更好的交易决策。设计/方法/方法:本研究采用不具有均值回归特性的随机过程,建立了一个可以计算任意指标变化的随机模型。为了显示我们提出的模型在计算任何指数变化方面的优越性和适用性,我们使用我们提出的模型来计算IXIC在10年内的每日收盘价,并得出IXIC指数的变化。研究结果:我们的研究结果表明,基于平均绝对百分比误差,我们提出的校准模型提供了更准确的短期指数估计,其预测准确性优于简单移动平均线和MACD。它通过为纳斯达克综合指数的价值提供95%的置信区间,提供对整体市场趋势的强劲预期。实际意义:我们提出的指标可以帮助投资者和市场分析师预测市场短期趋势,做出更好的交易决策。我们提出的模型为市场分析师提供了一个预测工具,通过我们提出的技术分析指标来预测市场趋势,优于一些传统的技术分析指标,包括简单移动平均线和移动平均收敛散度。原创性/价值:我们的方法、结果和结论在文献中是新颖的。我们提出的模型是一种新的技术指标,用于预测基于随机过程的任何指数,已被发现优于一些经典指标。本研究对决策科学领域做出了重大贡献,因为我们开发的指标起着至关重要的作用。它可以根据使用我们提出的模型估计的市场趋势预测做出更好的买卖决策。通过这种方式,该指标为专业人士做出投资决策提供了附加价值。本文的研究成果有助于开发新的技术分析指标。这里,IXIC指数就是一个例子,这个指标的使用范围更广,可以关注任何股票市场指数和任何股票。因此,这项工作丰富了文献,为任何想要使用随机过程为不同金融资产开发新的技术指标的研究人员开辟了新的途径。
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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来源期刊
Advances in Decision Sciences
Advances in Decision Sciences Mathematics-Applied Mathematics
CiteScore
4.70
自引率
0.00%
发文量
18
审稿时长
29 weeks
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