2018
DOI: 10.1007/978-3-319-97310-4_13
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A Lazy One-Dependence Classification Algorithm Based on Selective Patterns

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“…Despite achieving robust results through the optimization of evaluation factors via nine machine learning models and geographic detectors, this study has its uncertainties and limitations. The pre-processing resolution varied as data were resampled from 30 × 30 m across the dataset, a common practice in prior studies [59], yet potentially distorting peripheral values of seismic landslide data. We addressed these distortions by eliminating 13 outliers identified through field comparison.…”
Section: Data Processing and Sampling In Landslide Predictionmentioning
confidence: 99%
“…Despite achieving robust results through the optimization of evaluation factors via nine machine learning models and geographic detectors, this study has its uncertainties and limitations. The pre-processing resolution varied as data were resampled from 30 × 30 m across the dataset, a common practice in prior studies [59], yet potentially distorting peripheral values of seismic landslide data. We addressed these distortions by eliminating 13 outliers identified through field comparison.…”
Section: Data Processing and Sampling In Landslide Predictionmentioning
confidence: 99%