Columns: 1) Identifier: --> 2XXX Dateset ID (2=MMSys, 3=UMA, 4=MiBShar, 5=SisFall) --> X001 Subject number 2) Dataset: (redundant to 1) (2=MMSys, 3=UMA, 4=MiBShar, 5=SisFall) 3) Subject ID: (redundant to 1) 4) SensorPosition: Sensor position of the data in the test set. CHEST, THIGH, WAIST, unknown (=mixed) 5) TrainingDataPosition: Sensor position of the data in the training set 6) TrainingDataEqualsSensorPosition: 0: Training and test sensor position is not the same 1: Training and test sensor position is the same 7) Group: Group number that this subject is assigned to based on the clustering 8) Test: Baseline - Training set: All subjects, all positions; Test set: All positions from one subject BaselinePosition - Training set: All subjects, all positions; Test set: One position for one subject Group - Training set: All subjects from same group, all positions; Test set: All positions from one subject GroupPosition - Training set: All subjects from same group, all positions; Test set: One position for one subject PositionAndGroupAware - Training set: All subjects from same group, one position; Test set: One position for one subject PositionError - Training set: One position from all subjects; Test set: One position for one subject 9) Classifier: The names stand for the following algorithms used: ANNRangeAlgorithm -> ANN with feature vector 1 ANNRangeAlgorithmGravity -> ANN with feature vector 2 J48FallDetectionAlgorithm -> J48 decision tree with feature vector 3 J48FallDetectionAlgorithmGravity -> J48 decision tree with feature vector 4 J48SumVectorMagAlgorithm -> J48 decision tree with feature vector 5 KNNAlgorithm --> KNN with feature vector 3 KNNAlgorithmGravity -> KNN with feature vector 4 RandomForestAlgorithm -> Random Forest with feature vector 3 RandomForestAlgorithmGravity -> Random Forest with feature vector 4 SisFallAccuracyThresholdAlgorithm -> Threshold algorithm with feature vector 6, optimized for accuracy fall SisFallSensitivityThresholdAlgorithm -> Threshold algorithm with feature vector 6, optimized for sensitivity fall SVMKauAndChen2014Algorithm -> SVM with feature vector 7 Feature Vector 1: - Acceleration range Feature vector 2: - Acceleration range - Gravity Feature vector 3: - Mean accleration - Variance in acceleration - Standard deviation in acceleration - Median of acceleration - Interquartile range - Mean absolute deviation - Kurtosis - Correlation coefficient - Entropy (Time) - Energy - Standard deviation magnitude horizontal - Sum vector magnitude - Acceleration range Feature vector 4: - Mean accleration - Variance in acceleration - Standard deviation in acceleration - Median of acceleration - Interquartile range - Mean absolute deviation - Kurtosis - Correlation coefficient - Entropy (Time) - Energy - Standard deviation magnitude horizontal - Sum vector magnitude - Acceleration range - Gravity Feature vector 5: - Sum vector magnitude Feature vector 6: - Standard deviation magnitude horizontal Feature vector 7: - Standard deviation in acceleration - Sum vectore magnitude 10) CM_0_0: Confusion matrix at row 0, column 0 11) CM_0_1: Confusion matrix at row 0, column 1 12) CM_1_0: Confusion matrix at row 1, column 1 13) CM_1_1: Confusion matrix at row 1, column 1 14) PrecisionFall 15) RecallFall 16) fMeasureFall 17) PrecisionADL 18) RecallADL 19) fMeasureADL