TY - EJOU AU - Karthik, S. AU - Bhadoria, Robin Singh AU - Lee, Jeong Gon AU - Sivaraman, Arun Kumar AU - Samanta, Sovan AU - Balasundaram, A. AU - Chaurasia, Brijesh Kumar AU - Ashokkumar, S. TI - Prognostic Kalman Filter Based Bayesian Learning Model for Data Accuracy Prediction T2 - Computers, Materials \& Continua PY - 2022 VL - 72 IS - 1 SN - 1546-2226 AB - Data is always a crucial issue of concern especially during its prediction and computation in digital revolution. This paper exactly helps in providing efficient learning mechanism for accurate predictability and reducing redundant data communication. It also discusses the Bayesian analysis that finds the conditional probability of at least two parametric based predictions for the data. The paper presents a method for improving the performance of Bayesian classification using the combination of Kalman Filter and K-means. The method is applied on a small dataset just for establishing the fact that the proposed algorithm can reduce the time for computing the clusters from data. The proposed Bayesian learning probabilistic model is used to check the statistical noise and other inaccuracies using unknown variables. This scenario is being implemented using efficient machine learning algorithm to perpetuate the Bayesian probabilistic approach. It also demonstrates the generative function for Kalman-filer based prediction model and its observations. This paper implements the algorithm using open source platform of Python and efficiently integrates all different modules to piece of code via Common Platform Enumeration (CPE) for Python. KW - Bayesian learning model; kalman filter; machine learning; data accuracy prediction DO - 10.32604/cmc.2022.023864