Stochastic kernelized discriminant extreme learning machine classifier for big data predictive analytics
Downloads
Published
DOI:
https://doi.org/10.58414/SCIENTIFICTEMPER.2024.15.spl.46Keywords:
Big data, predictive analytics, stochastic kernelized quadratic discriminant analysis, qualitative indexed extreme learning classifier, Baroni–Urbani–Buser coefficient, Hardlimit activation function.Dimensions Badge
Issue
Section
License
Copyright (c) 2024 The Scientific Temper

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
Predictive analytics has appeared as a dominant tool to improve crop yield in the agriculture field by leveraging big data. Soil is a vital aspect in determining the growth of crop production, and its attributes considerably influence crop growth, nutrient availability, and overall crop yield. Predictive analytics involves the combination of big soil data with weather information for crop yield estimation. By utilizing chronological data on crop performance, different machine learning (ML) and deep learning (DL) models have been developed to forecast crop yield outcomes under different scenarios. However, accurate prediction in the shortest possible time is a major challenging issue. A novel model called stochastic kernelized discriminant extreme learning machine classifier (SKDELMC) is introduced for crop yield forecast by analyzing large amounts of soil as well as weather big data. This SKDELMC model typically includes feature selection and classification to identify the most relevant features and classify the data into different categories. A number of data is gathered from a dataset. This data includes a range of soil parameters and the weather features that influence crop growth. After the data collection, with a huge number of features, it’s important to choose mainly relevant ones for predictive analytics. The stochastic kernelized quadratic discriminant analysis is applied to identify the main informative features to minimize time complexity prediction. Once relevant features are chosen, the next step is to classify data into different categories using the qualitative indexed extreme learning classifier. It is a feed-forward neural network having a straightforward solution without requiring any iteration. A network includes different layers, such as the input layer, multiple hidden layers, as well as output layer. Relevant features are provided to the input layer. Then Baroni–Urbani–Buser coefficient is applied in the hidden layer by analyzing testing as well as training data is the qualitative index used to analyze the similarity between the data. After that, the Hardlimit activation function is utilized for evaluating similarity value as well as providing classification results. Based on the classification results, accurate prediction outcomes are attained at the output layer. Experimental evaluation is carried out by dissimilar quantitative parameters, namely disease prediction accuracy, sensitivity, false-positive rate, prediction time, and space complexity. Discussed performance outcomes illustrate that the SKDELMC model improves the accuracy of prediction and decreases the time consumption as well as space complexity than existing prediction techniques.Abstract
How to Cite
Downloads
Similar Articles
- B Tharini, R. Rajasudha , A Kannammal, Performance analysis of microstrip patch antenna using binomial series expansion , The Scientific Temper: Vol. 14 No. 02 (2023): The Scientific Temper
- R. Sudha, B Indira, M Kalidas, Kalluri Rama Krishna, M. Jithender Reddy, G.N.R. Prasad, E-commerce in the B2B market: solutions for the point of sale , The Scientific Temper: Vol. 14 No. 03 (2023): The Scientific Temper
- Panda Aditi Ambarish, Kaushik Trivedi, Immersive learning: A virtual reality teaching model for enhancing english speaking skills , The Scientific Temper: Vol. 15 No. spl-2 (2024): The Scientific Temper
- Usmanova S. Bultakovna, Legal regulation of tourism services in the framework of the general agreement on trade in services , The Scientific Temper: Vol. 15 No. 02 (2024): The Scientific Temper
- K. Mohamed Arif Khan, A.R. Mohamed Shanavas, Optimizing IoT application deployment with fog - cloud paradigm: A resource-aware approach , The Scientific Temper: Vol. 15 No. 04 (2024): The Scientific Temper
- Afroz Alam, Krishna Kumar Rawat, Praveen Kumar Verma, Sonu Yadav, Bryodiversity of Eastern Ghats (India) , The Scientific Temper: Vol. 7 No. 1&2 (2016): THE SCIENTIFIC TEMPER
- J. Helan Shali Margret, N. Amsaveni, Application of Lotka’s law in Indian cytokine publications: A scientometric study based on web of science during 1998 TO 2022 , The Scientific Temper: Vol. 15 No. spl-1 (2024): The Scientific Temper
- Mantsha Rayeen, Roshni Sengupta, Sanjay Chaudhary, Short-term changes in lens vault post implantable collamer lens surgery in myopic patients , The Scientific Temper: Vol. 16 No. 07 (2025): The Scientific Temper
- Geeta S Desai, Santosh Hajare, Sangeeta Kharde, Prevalence of non-alcoholic steatohepatitis in a general population of North Karnataka , The Scientific Temper: Vol. 14 No. 04 (2023): The Scientific Temper
- Kritika Gautam, Anitha Arvind, Neha Kapur, Mukesh Kumar, The keratometry changes pre and post-applanation tonometry , The Scientific Temper: Vol. 16 No. 06 (2025): The Scientific Temper
<< < 42 43 44 45 46 47 48 49 50 51 > >>
You may also start an advanced similarity search for this article.

