KernelKnn 1.1.4
- The pull request 7 fixed a bug in the checking of the Levels argument (see https://github.com/mlampros/KernelKnn/pull/7)
- I fixed an omission of the column names in case of classification in the KernelKnn() and distMat.KernelKnn() functions (see https://github.com/mlampros/KernelKnn/issues/8)
KernelKnn 1.1.3
- I updated the References section of the switch.ops() function in the utils.R file which explain how the combination of the kernels work
- I added an error case in all functions that make usage of the ‘Levels’ parameter if the ‘Levels’ do not match the unique ‘y’ labels
- I removed the distMat.KernelKnnCV() function (and the tests/test-dist_kernelknnCV.R file) because based on the current implementation of the distMat.KernelKnn() function the TEST_indices parameter must consist of the last indices of the input DIST_mat distance matrix and this is not the case if we run cross-validation (see issue 5)
KernelKnn 1.1.2
- I’ve fixed an error in the CITATION file
KernelKnn 1.1.1
- I’ve added the CITATION file in the inst directory
KernelKnn 1.1.0
- I fixed the “failure: the condition has length > 1” CRAN error which appeared mainly due to the misuse of the base class() function in multiple code snippets in the package (for more info on this matter see: https://developer.r-project.org/Blog/public/2019/11/09/when-you-think-class.-think-again/index.html)
KernelKnn 1.0.9
I added a test case to check equality of the results between KernelKnnCV and distMat.KernelKnnCV functions
KernelKnn 1.0.8
I added the DARMA_64BIT_WORD flag in the Makevars file to allow the package processing big datasets
KernelKnn 1.0.7
I modified the input_dist_mat function of the distance_metrics.cpp file due to a bug. I modified the distMat.KernelKnn function so that it does not return an error if the rows of the DIST_mat distance matrix is not equal to the length of y (added comments in the function documentation).
KernelKnn 1.0.6
In this version the following functions/parameters were added:
- seed_num : parameter in KernelKnnCV and distMat.KernelKnnCV cross-validation functions, which specifies the seed of R’s random number generator
- distMat.KernelKnn : this function performs kernel k-nearest-neighbor search by using a distance matrix as input
- distMat.knn.index.dist : this function returns the indices and distances for k-nearest neighbors using a distance matrix
- distMat.KernelKnnCV : this function performs cross-validated kernel k-nearest-neighbor search using a distance matrix as input
I also modified the OpenMP clauses of the .cpp file to address the ASAN errors.
KernelKnn 1.0.5
I removed OpenImageR and irlba as package dependencies. I also added an init.c file in the src folder due to a change in CRAN submissions for compiled code [ references : http://stackoverflow.com/questions/42313373/r-cmd-check-note-found-no-calls-to-r-registerroutines-r-usedynamicsymbols, https://github.com/RcppCore/Rcpp/issues/636 ]
KernelKnn 1.0.4
I added a try-catch Rcpp function to make possible the calculation of singular covariance matrices as sugggested in https://github.com/mlampros/KernelKnn/issues/1
KernelKnn 1.0.3
Reimplementation of the Rcpp function due to ASAN-memory-errors
KernelKnn 1.0.2
I updated the Description file with a URL and a BugReports web-address.
KernelKnn 1.0.1
Currently, Software platforms like OSX do not support openMP, thus I’ve made openMP optional for all cpp functions.
KernelKnn 1.0.0