multiclassPairs
v0.4.3 (Release date: 2021-05-16)
minor CRAN fixes
multiclassPairs
v0.4.1 (Release date: 2021-01-26)
minor changes
- minor change in rule_based_RandomForest print method
 
- default of k_range in train_one_vs_rest_TSP set to 10:50 instead of
2:50
 
- default of genes_altogether and genes_one_vs_rest in sort_rules_RF
set to 50 instead of 200
 
- default of rules_altogether and rules_one_vs_rest in train_RF set to
50 instead of 200
 
- Update the tutorial with time and accuracy comparisons
 
multiclassPairs
v0.4.0 (Release date: 2020-11-19)
changes
- train_RF has optimized gene_repetition method
 
multiclassPairs
v0.3.1 (Release date: 2020-11-16)
changes
- replace the mode imputation method by kNN method in predict_RF
function.
 
- train_RF now stores the whole binary matrix instead of mode
matrix.
 
- change work-flow figures in the tutorial.
 
- the predict_RF function can predict matrix with one sample with no
error
 
multiclassPairs
v0.3.0 (Release date: 2020-11-02)
changes:
- proximity_matrix_RF replaced cocluster_RF function and it can return
and plot the proximity matrix
 
Bug fixes:
- FIXED: plot_binary_RF does not get the predictions and scores when
using as_training=TRUE and top_anno=“platfrom” or “prediction”
 
multiclassPairs
v0.2.2 (Release date: 2020-10-09)
Additions:
- Tutorial is available now.
 
Minor changes:
- easier access to switchBox disjoint argument in
train_one_vs_rest_TSP function.
 
- Update examples.
 
Bug fixes:
- plot_binary_TSP when using ExpressionSet as input with no ref or
platform.
 
- passing additional arguments to SB training function by the
user.
 
- printing number of rules in the print function for sorted
rules.
 
- border = NA instead of border = FALSE in plotting functions.
 
- optimize_RF can handle two classes problems without errors
 
- num.trees = num.trees missed in ranger for featureNo_altogether
slots
 
multiclassPairs
v0.2.1 (Release date: 2020-09-28)
Dependencies:
- Dependency issue solved (switchBox and Biobase packages are
installed separately).
 
Minor changes:
multiclassPairs
v0.2.0 (Release date: 2020-09-24)
Additions:
- additional function summary_genes_RF to summarize genes to rules
stats.
 
- additional function optimize_RF to help in train_RF parameters
optimization.
 
Changes:
- plot_binary_RF now supports when RF model is trained with
probability = FALSE.
 
- plot_binary_RF extracts prediction labels for training data from the
classifier object.
 
- imputation is implemented in predict_RF function.
 
- NA is not allowed for class and platforms labels.
 
Optimizations:
- stats for gene repetition in rules are stored in the sorted rules
object to make training process faster.
 
Minor changes:
- Update examples.
 
- minor bug fixes.
 
multiclassPairs
v0.1.6 (Release date: 2020-09-08)
- first release on CRAN servers