LLAMA results

All results were produced by using the cross-validation splits in the repository with 10 folds and 1 repetitions.
The best values within a type (i.e., baseline (except for vbs), classif, regr and cluster) and performance measure (i.e., Percentage solved, PAR10, MCP) are colored green. Furthermore, the three best values over all groups within a performance measure are colored pink, the absolute best one is red.

The performance is measured in three different ways.

algo model succ par10 mcp
baseline vbs 0.927 1357.946 0.000
baseline singleBest 0.880 2231.047 118.358
baseline singleBestByPar 0.880 2231.047 118.358
baseline singleBestBySuccesses 0.880 2231.047 118.358
classif rpart 0.890 2022.319 71.361
classif randomForest 0.900 1845.000 55.772
classif ksvm 0.903 1783.047 47.730
cluster XMeans 0.902 1839.296 77.024
regr lm 0.902 1830.388 68.116
regr rpart 0.889 2063.111 85.198
regr randomForest 0.912 1646.440 45.898

The following default feature steps were used for model building:

ALL

Number of presolved instances: 0

The cost for using the feature steps (adapted for presolving) is: 0 or on average: NA

The feature steps correspond to the following 37 / 37 instance features:

f_1, f_2, f_3, f_4, f_5,
f_6, f_7, f_8, f_9, f_10,
f_11, f_12, f_13, f_14, f_15,
f_16, f_17, f_18, f_19, f_20,
f_21, f_22, f_23, f_24, f_25,
f_26, f_27, f_28, f_29, f_30,
f_31, f_32, f_33, f_34, f_35,
f_36, f_37

Algorithm and Feature Subset Selection

In order to get a better insight of the scenarios, forward selections have been applied to the solvers and features to determine whether small subsets achieve comparable performances. Following this approach, we reduced the number of solvers from 29 to 7, resulting in a PAR10 score of 1561.791 for the reduced model. Analogously, the model that was generated based on 5 of the originally 29 features resulted in a PAR10 score of 1524.254. Below, you can find the list of the selected features and solvers:

Selected Features:
f_3, f_9, f_11, f_15, f_36


Selected Solvers:
CCEHC2akms, ILP.2015, LMHS.I, MaxHS, Open.WBO.R,
WPM3.2015.co, maxino.k16