Comparative analysis of machine learning models for stock price analysis across different dataset sizes
Date
2023-05Publisher
Brac UniversityAuthor
Srabon, Abir AlamAbrar, Mahmudul Hasan
Rahman, Nimur
Ahmed, Washif Uddin
Hridy, Salamat Sajid
Metadata
Show full item recordAbstract
The nature of the stock market has always been ambiguous as it constantly fluctuates for various factors. The regular fluctuations have always made it difficult
for investors to invest. This paper compares six different machine learning models for stock price analysis: Explainable AI, Q-learning method, LSTM, Bi-LSTM,
Restricted Boltzmann Machine, and Deep Belief Network. Each model was evaluated using three different datasets consisting of 7000, 10000, and 14000 data points,
respectively. The results of the experiments show that depending on the size of
the dataset, the performance varies and the specific model used. In general, the
deep learning models (LSTM, Bi-LSTM, Restricted Boltzmann Machine, and Deep
Belief Network) outperformed the Explainable AI and Q-learning models in terms
of predictive accuracy. However, the Explainable AI and Q-learning models had
the advantage of being more interpretable and easier to understand, which may
be desirable in certain applications. Overall, this study provides insights into the
strengths and weaknesses of various machine learning models for stock price analysis and highlights the importance of choosing the right model for the specific task
at hand. Future work concentrates on optimizing the performance of the models
further or exploring the use of hybrid models that combine the strengths of multiple
approaches.