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Efficient multi-level lung cancer prediction model using support vector machine classifier

B R Manju, V Athira, Athul Rajendran

2021IOP Conference Series Materials Science and Engineering40 citationsDOIOpen Access PDF

Abstract

Abstract This paper aims at the requirement for an interactive learning framework which empowers the successful checking of disorder in a patient. Principal component analysis stands out as an outstanding algorithm to significantly classify the target classes. PCA blends associated characteristics and makes a dissipated showcase of its components well. Scree plot examination gives solidarity of how many principal components are to be retained. Support Vector Machines (SVM ) is a fast and dependable classification algorithm that outperforms other techniques with a limited amount of data. The obtained components will be served to Support Vector Machine for further classification. The pre-dangerous stage will remind the clinical experts to give additional consideration to those patients. The expectation ability is estimated in terms of the confusion matrix. The model developed gives a high and uncompromising accuracy in early detection of different levels of malignancy

Topics & Concepts

Support vector machineConfusion matrixPrincipal component analysisComputer scienceClassifier (UML)Artificial intelligenceRelevance vector machineMachine learningConfusionStructured support vector machineData miningPattern recognition (psychology)PsychologyPsychoanalysisSpectroscopy and Chemometric AnalysesAdvanced Chemical Sensor TechnologiesGene expression and cancer classification
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