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Titlebook: Data Mining; 16th Australasian Co Rafiqul Islam,Yun‘Sing Koh,Zahidul Islam Conference proceedings 2019 Springer Nature Singapore Pte Ltd. 2

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Noyale Colin,Stefanie Sachsenmaieribility of their trained model. As different cities usually contain a different set of location features (district names, apartment names), most existing mass appraisal methods have to train a new model from scratch for different cities or regions. As a result, these approaches require massive data
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A Case for Collaborative Staff Developmentding conditions of vector mosquitos. We use Hamiltonian Monte Carlo sampling to estimate a seasonal Gaussian process modeling infection rate, and aperiodic basis coefficients for the rate of an “outbreak level” of infection beyond seasonal trends across two separate regions. We use this outbreak lev
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Multiple Support Vector Machines for Binary Text Classification Based on Sliding Window Techniqueification, linear SVM has shown remarkable efficiency for classifying documents due to its superior performance. It tries to create the best decision boundary that enables the separation of positive and negative documents with the largest margin hyperplane. However, in most cases there are regions i
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Categorical Features Transformation with Compact One-Hot Encoder for Fraud Detection in Distributed mbination of numeric as well as mixed attributes. Usually, numeric format data gives better performance for classification, regression and clustering algorithms. However, many machine learning problems have categorical, or nominal features, rather than numeric features only. In addition, some machin
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Combining Machine Learning and Statistical Disclosure Control to Promote Open Dataed variables in its open crash data for privacy-preserving data mining. Instead of making arbitrary decisions in variable aggregation and using perturbation to guard against reidentification attacks at the cost of data distortion, we creatively drew upon feature engineering and dimensionality reduct
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