학술논문

Performance evaluation and application of computation based low-cost homogeneous machine learning model algorithm for image classification
Document Type
Working Paper
Author
Source
Subject
Computer Science - Machine Learning
Computer Science - Computer Vision and Pattern Recognition
Language
Abstract
The image classification machine learning model was trained with the intention to predict the category of the input image. While multiple state-of-the-art ensemble model methodologies are openly available, this paper evaluates the performance of a low-cost, simple algorithm that would integrate seamlessly into modern production-grade cloud-based applications. The homogeneous models, trained with the full instead of subsets of data, contains varying hyper-parameters and neural layers from one another. These models' inferences will be processed by the new algorithm, which is loosely based on conditional probability theories. The final output will be evaluated.