2020
DOI: 10.30534/ijatcse/2020/125932020
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A Semantic Approach of the Naïve Bayes Classification Algorithm

Abstract: This study aims to study the semantic approach of Naïve Bayes Classification Algorithm. From a statistical, probabilistic machine learning model, the classical decision-level classification algorithm which is the Naïve Bayes classifier shows to be efficient on a variety of sentiment classification problems. Naive Bayes is often used in sentiment classification applications and practical experiments because of its simplicity and effectiveness. However, its performance is often degraded because of the reliabilit… Show more

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Cited by 5 publications
(2 citation statements)
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“…Hua et al selected Dunhua murals and Oriental murals for research, analyzed the artistic style attributes of painting works, formulated the similarity rules of artistic style, and classified the artistic style of works by calculating the similarity coefficient between images [ 6 ]. Tesoro proposed an image semantic classification algorithm based on saliency, which uses the decomposition low rank matrix algorithm to reasonably divide the main areas of image semantics, effectively avoid the problem of painting semantics, and has become one of the commonly used methods in painting image semantic classification [ 7 ]. Hastings et al proposed a way to evaluate the aesthetic visual quality and built a painting image visual quality model based on the designed local feature and global feature extraction method, so as to classify low vision and high visual quality paintings [ 8 ].…”
Section: Related Workmentioning
confidence: 99%
“…Hua et al selected Dunhua murals and Oriental murals for research, analyzed the artistic style attributes of painting works, formulated the similarity rules of artistic style, and classified the artistic style of works by calculating the similarity coefficient between images [ 6 ]. Tesoro proposed an image semantic classification algorithm based on saliency, which uses the decomposition low rank matrix algorithm to reasonably divide the main areas of image semantics, effectively avoid the problem of painting semantics, and has become one of the commonly used methods in painting image semantic classification [ 7 ]. Hastings et al proposed a way to evaluate the aesthetic visual quality and built a painting image visual quality model based on the designed local feature and global feature extraction method, so as to classify low vision and high visual quality paintings [ 8 ].…”
Section: Related Workmentioning
confidence: 99%
“…Naive Bayes is a classification algorithm that is widely used in medical research for its simplicity, efficiency, and effectiveness [24]. This method is good for data related to statistical diagnosis, thus making it very valuable in medical science [25].…”
Section: Naïve Bayesmentioning
confidence: 99%