Cite Article
Cite Article
MLA
Mittal, Shruti, and Anubhav Chauhan. "A RNN-LSTM-Based Predictive Modelling Framework for Stock Market Prediction Using Technical Indicators." IJRSDA vol.7, no.1 2021: pp.1-13. http://doi.org/10.4018/IJRSDA.288521
APA
Mittal, S. & Chauhan, A. (2021). A RNN-LSTM-Based Predictive Modelling Framework for Stock Market Prediction Using Technical Indicators. International Journal of Rough Sets and Data Analysis (IJRSDA), 7 (1), 1-13. http://doi.org/10.4018/IJRSDA.288521
Chicago
Mittal, Shruti, and Anubhav Chauhan. "A RNN-LSTM-Based Predictive Modelling Framework for Stock Market Prediction Using Technical Indicators," International Journal of Rough Sets and Data Analysis (IJRSDA) 7, no.1: 1-13. http://doi.org/10.4018/IJRSDA.288521
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International Journal of Rough Sets and Data Analysis (IJRSDA) The International Journal of Rough Sets and Data Analysis (IJRSDA) is a multidisciplinary journal that publishes high-quality and significant research in all fields of rough sets, granular computing, and data mining techniques. Rough set theory is a mathematical approach concerned with the analysis and modeling of classification and decision problems involving vague, imprecise, uncertain, or incomplete information. Rough sets have been proposed for a variety of applications, including artificial intelligence and cognitive sciences, especially machine learning, knowledge discovery, data mining, expert systems, approximate reasoning, and pattern recognition. The journal extends existing research findings (theoretical innovations and modeling applications) to provide the highest quality original concepts, hybrid applications, innovative methodologies, and development trends studies for all audiences. This journal publishes original articles, reviews, technical reports, patent alerts, and case studies on the latest innovative findings of new methodologies and techniques.
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