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Clustering and Classification of a Qualitative Colorimetric Test
Marzia Hoque Tania
, K T Lwin
, Antesar M Shabut
, Alamgir Hossain
Centre for Digital Innovation
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Computer Science
Mobile Device
100%
Machine Learning Technique
100%
Binary Classification
100%
Fold Cross Validation
100%
Multilayer Perceptron
100%
Mobile Platform
100%
k-Nearest Neighbors Algorithm
100%
Regularization
100%
Detection Method
100%
Machine Learning
100%
Learning System
100%
Keyphrases
Colorimetric Determination
100%
Detection Method
33%
Healthcare
33%
Classification Basis
33%
Mobile Devices
33%
Machine Learning-based Detection
33%
Forensic Analysis
33%
Binary Classification
33%
Point-of-care
33%
10-fold Cross Validation
33%
K-nearest
33%
Environmental Monitoring
33%
Diagnostic Decisions
33%
Multilayer Perceptron
33%
Color Moments
33%
Supervised Machine Learning
33%
Tuberculosis Disease
33%
Mobile Platform
33%
Tree Ensembles
33%
Colourimetric
33%
Agricultural Decisions
33%
Anytime Anywhere
33%
Plasmonic Enzyme-linked Immunosorbent Assay
33%
Bayesian Regularization Backpropagation
33%
Automatic System
33%
Color Perception
33%
Unsupervised Machine Learning Techniques
33%
Allergen Detection
33%