A Comprehensive Analysis of Supervised Learning Techniques for Electricity Theft Detection
Adaptive boosting; Crime; Decision trees; Deep neural networks; Neural networks; Supervised learning; Comparative studies; Comprehensive analysis; Electricity theft detection; Future research directions; Learning classifiers; Pre-processing method; Predictive accuracy; Supervised learning methods; L...
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Main Authors: | Bohani F.A., Suliman A., Saripuddin M., Sameon S.S., Md Salleh N.S., Nazeri S. |
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Other Authors: | 56288042200 |
Format: | Article |
Published: |
Hindawi Limited
2023
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