2021
DOI: 10.1007/978-981-16-0708-0_25
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Evaluation of Image Filtering Parameters for Plant Biometrics Improvement Using Machine Learning

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Cited by 6 publications
(2 citation statements)
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“…Machine learning is a branch of artificial intelligence that trains algorithms with data, in either supervised or unsupervised learning approach, and thereby gives capabilities to learn from data without being explicitly programmed and in turn make informed decisions after the learning process in what is referred to as testing the knowledge gain [22]. REPTree is reputable as a quick decision tree learner-algorithm which constructs a decision or regression tree with information gain as the splitting methodology, and prunes it with reduced error pruning method as it results in a more accurate classification tree; size of training and testing notwithstanding.…”
Section: Reptree Predictive Modellingmentioning
confidence: 99%
“…Machine learning is a branch of artificial intelligence that trains algorithms with data, in either supervised or unsupervised learning approach, and thereby gives capabilities to learn from data without being explicitly programmed and in turn make informed decisions after the learning process in what is referred to as testing the knowledge gain [22]. REPTree is reputable as a quick decision tree learner-algorithm which constructs a decision or regression tree with information gain as the splitting methodology, and prunes it with reduced error pruning method as it results in a more accurate classification tree; size of training and testing notwithstanding.…”
Section: Reptree Predictive Modellingmentioning
confidence: 99%
“…As technology and analytical methods have rapidly evolved since that time, there exists an unprecedented opportunity to reevaluate this historic dataset. New data science techniques, including Data Visualization, Correlation Analysis, and Differential Expression Analysis, stand poised to illuminate latent knowledge within historical cancer datasets, thereby offering vital contributions to contemporary cancer research and understanding (Taiwo Olaleye, 2021). Data Visualization, driven by advanced visualization tools, enables the exploration of complex gene expression profiles in an intuitive manner.…”
mentioning
confidence: 99%