Work place: Department Electronics and Communication Engineering, National Institute of Technology Tiruchirappalli-620015, Tamil Nadu, India
E-mail: sekharpraja@gmail.com
Website:
Research Interests: Machine Learning, Pattern Recognition, Computational Intelligence, Deep Learning
Biography
Rajasekharreddy Poreddy received the B.Tech. degree in electronics and communication engineering from G Pulla Reddy Engineering College, Kurnool, Andhra Pradesh, India, and the M.Tech. degree in communication systems from National Institute of Technology Tiruchirappalli, Tamil Nadu, India. He is currently pursuing Ph.D. degree in computational intelligence for pattern recognition and applications in the Department of Electronics and Communication Engineering, National Institute of Technology Tiruchirappalli, Tamil Nadu, India. His research interests include pattern recognition, computational intelligence, machine learning and deep learning.
By Rajasekharreddy Poreddy Gopi E. S.
DOI: https://doi.org/10.5815/ijisa.2024.05.02, Pub. Date: 8 Oct. 2024
This paper proposes a data-driven approximation of the Cumulative Distribution Function using the Finite Mixtures of the Cumulative Distribution Function of Logistic distribution. Since it is not possible to solve the logistic mixture model using the Maximum likelihood method, the mixture model is modeled to approximate the empirical cumulative distribution function using the computational intelligence algorithms. The Probability Density Function is obtained by differentiating the estimate of the Cumulative Distribution Function. The proposed technique estimates the Cumulative Distribution Function of different benchmark distributions. Also, the performance of the proposed technique is compared with the state-of-the-art kernel density estimator and the Gaussian Mixture Model. Experimental results on κ−μ distribution show that the proposed technique performs equally well in estimating the probability density function. In contrast, the proposed technique outperforms in estimating the cumulative distribution function. Also, it is evident from the experimental results that the proposed technique outperforms the state-of-the-art Gaussian Mixture model and kernel density estimation techniques with less training data.
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