Enhancing Machine Learning Models and Classification Accuracy with Advanced Attention Mechanisms

Author:

Donthu Somasekhar1,Nassa Vinay Kumar2,Mohan Chinnem Rama3,Keerthika T.4,Krishnam Nagendra Prasad5,Prasad Ch Raghava6,Kapila Dhiraj7

Affiliation:

1. GITAM University

2. Tecnia Institute of Advanced Studies

3. Narayana Engineering College

4. Sri Krishna College of Engineering and Technology

5. Malla Reddy University

6. Koneru Lakshmaiah Education Foundation

7. Lovely Professional University

Abstract

Abstract

This paper provides a detailed discussion of multiple machine learning algorithms and pays close attention to their use, advantages, and disadvantages. Specifically, the Random Forest classifier is highlighted for being more effective with a classification accuracy of 93% being achieved in a binary classification problem. The current method proves superior to known methods and preserves the spatial relationships, thus solving the vanishing gradient problem with the help of two kinds of attention mechanisms. This paper also examines various techniques, such as convolutional neural networks, k-means clustering, and collaborative filtering, explaining how these methods can be applied and optimized. Thus, the rationale of the paper lies in comparison of the above-mentioned methods, emphasizing the significance of modern approaches to ensemble learning for the improvement of model accuracy and stability. Moreover, the paper highlights areas for future research to explore, such as hyper parameters tuning, integration with deep learning frameworks, and use cases in practice. As a result, the presented results can be useful for more advanced studies in the field of machine learning as well as for practical applications for various domains when it is necessary to develop more effective approaches to the use of big data.

Publisher

Springer Science and Business Media LLC

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