-
Migrate from boost tests to Catch2 framework (#2523), (#2584).
-
Bump minimum armadillo version from 8.400 to 9.800 (#3043), (#3048).
-
Adding a copy constructor in the Convolution layer (#3067).
-
Replace
boost::spirit
parser by a local efficient implementation (#2942). -
Disable correctly the autodownloader + fix tests stability (#3076).
-
Replace
boost::any
withcore::v2::any
orstd::any
if available (#3006). -
Remove old non used Boost headers (#3005).
-
Replace
boost::enable_if
withstd::enable_if
(#2998). -
Replace
boost::is_same
withstd::is_same
(#2993). -
Remove invalid option for emsmallen and STB (#2960).
-
Check for armadillo dependencies before downloading armadillo (#2954).
-
Disable the usage of autodownloader by default (#2953).
-
Install dependencies downloaded with the autodownloader (#2952).
-
Download older Boost if the compiler is old (#2940).
-
Add support for embedded systems (#2531).
-
Build mlpack executable statically if the library is statically linked (#2931).
-
Fix cover tree loop bug on embedded arm systems (#2869).
-
Fix a LAPACK bug in
FindArmadillo.cmake
(#2929). -
Add an autodownloader to get mlpack dependencies (#2927).
-
Remove Coverage files and configurations from CMakeLists (#2866).
-
Added
Multi Label Soft Margin Loss
loss function for neural networks (#2345). -
Added Decision Tree Regressor (#2905). It can be used using the class
mlpack::tree::DecisionTreeRegressor
. It is accessible only though C++. -
Added dict-style inspection of mlpack models in python bindings (#2868).
-
Added Extra Trees Algorithm (#2883). Currently, it can be used using the class
mlpack::tree::ExtraTrees
, but only through C++. -
Add Flatten T Swish activation function (
flatten-t-swish.hpp
) -
Added warm start feature to Random Forest (#2881); this feature is accessible from mlpack's bindings to different languages.
-
Added Pixel Shuffle layer (#2563).
-
Add "check_input_matrices" option to python bindings that checks for NaN and inf values in all the input matrices (#2787).
-
Add Adjusted R squared functionality to R2Score::Evaluate (#2624).
-
Disabled all the bindings by default in CMake (#2782).
-
Added an implementation to Stratify Data (#2671).
-
Add
BUILD_DOCS
CMake option to control whether Doxygen documentation is built (default ON) (#2730). -
Add Triplet Margin Loss function (#2762).
-
Add finalizers to Julia binding model types to fix memory handling (#2756).
-
HMM: add functions to calculate likelihood for data stream with/without pre-calculated emission probability (#2142).
-
Replace Boost serialization library with Cereal (#2458).
-
Add
PYTHON_INSTALL_PREFIX
CMake option to specify installation root for Python bindings (#2797). -
Removed
boost::visitor
from model classes forknn
,kfn
,cf
,range_search
,krann
, andkde
bindings (#2803). -
Add k-means++ initialization strategy (#2813).
-
NegativeLogLikelihood<>
now expects classes in the range0
tonumClasses - 1
(#2534). -
Add
Lambda1()
,Lambda2()
,UseCholesky()
, andTolerance()
members toLARS
so parameters for training can be modified (#2861). -
Remove unused
ElemType
template parameter fromDecisionTree
andRandomForest
(#2874). -
Fix Python binding build when the CMake variable
USE_OPENMP
is set toOFF
(#2884). -
The
mlpack_test
target is no longer built as part ofmake all
. Usemake mlpack_test
to build the tests. -
Fixes to
HoeffdingTree
: ensure that training still works when empty constructor is used (#2964). -
Fix Julia model serialization bug (#2970).
-
Fix
LoadCSV()
to use pre-populatedDatasetInfo
objects (#2980). -
Add
probabilities
option to softmax regression binding, to get class probabilities for test points (#3001). -
Fix thread safety issues in mlpack bindings to other languages (#2995).
-
Fix double-free of model pointers in R bindings (#3034).
-
Fix Julia, Python, R, and Go handling of categorical data for
decision_tree()
andhoeffding_tree()
(#2971). -
Depend on
pkgbuild
for R bindings (#3081).
-
Added Mean Absolute Percentage Error.
-
Added Softmin activation function as layer in ann/layer.
-
Fix spurious ARMA_64BIT_WORD compilation warnings on 32-bit systems (#2665).
-
Fix incorrect parsing of required matrix/model parameters for command-line bindings (#2600).
-
Add manual type specification support to
data::Load()
anddata::Save()
(#2084, #2135, #2602). -
Remove use of internal Armadillo functionality (#2596, #2601, #2602).
-
Issue warnings when metrics produce NaNs in KFoldCV (#2595).
-
Added bindings for R during Google Summer of Code (#2556).
-
Added common striptype function for all bindings (#2556).
-
Refactored common utility function of bindings to bindings/util (#2556).
-
Renamed InformationGain to HoeffdingInformationGain in methods/hoeffding_trees/information_gain.hpp (#2556).
-
Added macro for changing stream of printing and warnings/errors (#2556).
-
Added Spatial Dropout layer (#2564).
-
Force CMake to show error when it didn't find Python/modules (#2568).
-
Refactor
ProgramInfo()
to separate out all the different information (#2558). -
Add bindings for one-hot encoding (#2325).
-
Added Soft Actor-Critic to RL methods (#2487).
-
Added Categorical DQN to q_networks (#2454).
-
Added N-step DQN to q_networks (#2461).
-
Add Silhoutte Score metric and Pairwise Distances (#2406).
-
Add Go bindings for some missed models (#2460).
-
Replace boost program_options dependency with CLI11 (#2459).
-
Additional functionality for the ARFF loader (#2486); use case sensitive categories (#2516).
-
Add
bayesian_linear_regression
binding for the command-line, Python, Julia, and Go. Also called "Bayesian Ridge", this is equivalent to a version of linear regression where the regularization parameter is automatically tuned (#2030). -
Fix defeatist search for spill tree traversals (#2566, #1269).
-
Fix incremental training of logistic regression models (#2560).
-
Change default configuration of
BUILD_PYTHON_BINDINGS
toOFF
(#2575).
-
Added Noisy DQN to q_networks (#2446).
-
Add Go bindings (#1884).
-
Added Dueling DQN to q_networks, Noisy linear layer to ann/layer and Empty loss to ann/loss_functions (#2414).
-
Storing and adding accessor method for action in q_learning (#2413).
-
Added accessor methods for ANN layers (#2321).
-
Addition of
Elliot
activation function (#2268). -
Add adaptive max pooling and adaptive mean pooling layers (#2195).
-
Add parameter to avoid shuffling of data in preprocess_split (#2293).
-
Add
MatType
parameter toLSHSearch
, allowing sparse matrices to be used for search (#2395). -
Documentation fixes to resolve Doxygen warnings and issues (#2400).
-
Add Load and Save of Sparse Matrix (#2344).
-
Add Intersection over Union (IoU) metric for bounding boxes (#2402).
-
Add Non Maximal Supression (NMS) metric for bounding boxes (#2410).
-
Fix
no_intercept
and probability computation for linear SVM bindings (#2419). -
Fix incorrect neighbors for
k > 1
searches inapprox_kfn
binding, for theQDAFN
algorithm (#2448). -
Fix serialization of kernels with state for FastMKS (#2452).
-
Add
RBF
layer in ann module to makeRBFN
architecture (#2261).
-
Minor Julia and Python documentation fixes (#2373).
-
Updated terminal state and fixed bugs for Pendulum environment (#2354, #2369).
-
Added
EliSH
activation function (#2323). -
Add L1 Loss function (#2203).
-
Pass CMAKE_CXX_FLAGS (compilation options) correctly to Python build (#2367).
-
Expose ensmallen Callbacks for sparseautoencoder (#2198).
-
Bugfix for LARS class causing invalid read (#2374).
-
Add serialization support from Julia; use
mlpack.serialize()
andmlpack.deserialize()
to save and load fromIOBuffer
s.
-
Added
Normal Distribution
toann/dists
(#2382). -
Templated return type of
Forward function
of loss functions (#2339). -
Added
R2 Score
regression metric (#2323). -
Added
poisson negative log likelihood
loss function (#2196). -
Added
huber
loss function (#2199). -
Added
mean squared logarithmic error
loss function for neural networks (#2210). -
Added
mean bias loss function
for neural networks (#2210). -
The DecisionStump class has been marked deprecated; use the
DecisionTree
class withNoRecursion=true
or useID3DecisionStump
instead (#2099). -
Added
probabilities_file
parameter to get the probabilities matrix of AdaBoost classifier (#2050). -
Fix STB header search paths (#2104).
-
Add
DISABLE_DOWNLOADS
CMake configuration option (#2104). -
Add padding layer in TransposedConvolutionLayer (#2082).
-
Fix pkgconfig generation on non-Linux systems (#2101).
-
Use log-space to represent HMM initial state and transition probabilities (#2081).
-
Add functions to access parameters of
Convolution
andAtrousConvolution
layers (#1985). -
Add Compute Error function in lars regression and changing Train function to return computed error (#2139).
-
Add Julia bindings (#1949). Build settings can be controlled with the
BUILD_JULIA_BINDINGS=(ON/OFF)
andJULIA_EXECUTABLE=/path/to/julia
CMake parameters. -
CMake fix for finding STB include directory (#2145).
-
Add bindings for loading and saving images (#2019);
mlpack_image_converter
from the command-line,mlpack.image_converter()
from Python. -
Add normalization support for CF binding (#2136).
-
Add Mish activation function (#2158).
-
Update
init_rules
in AMF to allow users to merge two initialization rules (#2151). -
Add GELU activation function (#2183).
-
Better error handling of eigendecompositions and Cholesky decompositions (#2088, #1840).
-
Add LiSHT activation function (#2182).
-
Add Valid and Same Padding for Transposed Convolution layer (#2163).
-
Add CELU activation function (#2191)
-
Add Log-Hyperbolic-Cosine Loss function (#2207).
-
Change neural network types to avoid unnecessary use of rvalue references (#2259).
-
Bump minimum Boost version to 1.58 (#2305).
-
Refactor STB support so
HAS_STB
macro is not needed when compiling against mlpack (#2312). -
Add Hard Shrink Activation Function (#2186).
-
Add Soft Shrink Activation Function (#2174).
-
Add Hinge Embedding Loss Function (#2229).
-
Add Cosine Embedding Loss Function (#2209).
-
Add Margin Ranking Loss Function (#2264).
-
Bugfix for incorrect parameter vector sizes in logistic regression and softmax regression (#2359).
-
Add
valid
andsame
padding option inConvolution
andAtrous Convolution
layer (#1988). -
Add Model() to the FFN class to access individual layers (#2043).
-
Update documentation for pip and conda installation packages (#2044).
-
Add bindings for linear SVM (#1935);
mlpack_linear_svm
from the command-line,linear_svm()
from Python. -
Add support to return the layer name as
std::string
(#1987). -
Speed and memory improvements for the Transposed Convolution layer (#1493).
-
Fix Windows Python build configuration (#1885).
-
Validate md5 of STB library after download (#2087).
-
Add
__version__
to__init__.py
(#2092). -
Correctly handle RNN sequences that are shorter than the value of rho (#2102).
-
Enforce CMake version check for ensmallen (#2032).
-
Fix CMake check for Armadillo version (#2029).
-
Better handling of when STB is not installed (#2033).
-
Fix Naive Bayes classifier computations in high dimensions (#2022).
-
Fix some potential infinity errors in Naive Bayes Classifier (#2022).
-
Fix occasionally-failing RADICAL test (#1924).
-
Fix gcc 9 OpenMP compilation issue (#1970).
-
Added support for loading and saving of images (#1903).
-
Add Multiple Pole Balancing Environment (#1901, #1951).
-
Added functionality for scaling of data (#1876); see the command-line binding
mlpack_preprocess_scale
or Python bindingpreprocess_scale()
. -
Add new parameter
maximum_depth
to decision tree and random forest bindings (#1916). -
Fix prediction output of softmax regression when test set accuracy is calculated (#1922).
-
Pendulum environment now checks for termination. All RL environments now have an option to terminate after a set number of time steps (no limit by default) (#1941).
-
Add support for probabilistic KDE (kernel density estimation) error bounds when using the Gaussian kernel (#1934).
-
Fix negative distances for cover tree computation (#1979).
-
Fix cover tree building when all pairwise distances are 0 (#1986).
-
Improve KDE pruning by reclaiming not used error tolerance (#1954, #1984).
-
Optimizations for sparse matrix accesses in z-score normalization for CF (#1989).
-
Add
kmeans_max_iterations
option to GMM training bindinggmm_train_main
. -
Bump minimum Armadillo version to 8.400.0 due to ensmallen dependency requirement (#2015).
-
Fix random forest bug for numerical-only data (#1887).
-
Significant speedups for random forest (#1887).
-
Random forest now has
minimum_gain_split
andsubspace_dim
parameters (#1887). -
Decision tree parameter
print_training_error
deprecated in favor ofprint_training_accuracy
. -
output
option changed topredictions
for adaboost and perceptron binding. Old options are now deprecated and will be preserved until mlpack 4.0.0 (#1882). -
Concatenated ReLU layer (#1843).
-
Accelerate NormalizeLabels function using hashing instead of linear search (see
src/mlpack/core/data/normalize_labels_impl.hpp
) (#1780). -
Add
ConfusionMatrix()
function for checking performance of classifiers (#1798). -
Install ensmallen headers when it is downloaded during build (#1900).
-
Add DiagonalGaussianDistribution and DiagonalGMM classes to speed up the diagonal covariance computation and deprecate DiagonalConstraint (#1666).
-
Add kernel density estimation (KDE) implementation with bindings to other languages (#1301).
-
Where relevant, all models with a
Train()
method now return adouble
value representing the goodness of fit (i.e. final objective value, error, etc.) (#1678). -
Add implementation for linear support vector machine (see
src/mlpack/methods/linear_svm
). -
Change DBSCAN to use PointSelectionPolicy and add OrderedPointSelection (#1625).
-
Residual block support (#1594).
-
Bidirectional RNN (#1626).
-
Dice loss layer (#1674, #1714) and hard sigmoid layer (#1776).
-
output
option changed topredictions
andoutput_probabilities
toprobabilities
for Naive Bayes binding (mlpack_nbc
/nbc()
). Old options are now deprecated and will be preserved until mlpack 4.0.0 (#1616). -
Add support for Diagonal GMMs to HMM code (#1658, #1666). This can provide large speedup when a diagonal GMM is acceptable as an emission probability distribution.
-
Python binding improvements: check parameter type (#1717), avoid copying Pandas dataframes (#1711), handle Pandas Series objects (#1700).
-
Bump minimum CMake version to 3.3.2.
-
CMake fixes for Ninja generator by Marc Espie.
-
Fix Visual Studio compilation issue (#1443).
-
Allow running local_coordinate_coding binding with no initial_dictionary parameter when input_model is not specified (#1457).
-
Make use of OpenMP optional via the CMake 'USE_OPENMP' configuration variable (#1474).
-
Accelerate FNN training by 20-30% by avoiding redundant calculations (#1467).
-
Fix math::RandomSeed() usage in tests (#1462, #1440).
-
Generate better Python setup.py with documentation (#1460).
-
Documentation generation fixes for Python bindings (#1421).
-
Fix build error for man pages if command-line bindings are not being built (#1424).
-
Add 'shuffle' parameter and Shuffle() method to KFoldCV (#1412). This will shuffle the data when the object is constructed, or when Shuffle() is called.
-
Added neural network layers: AtrousConvolution (#1390), Embedding (#1401), and LayerNorm (layer normalization) (#1389).
-
Add Pendulum environment for reinforcement learning (#1388) and update Mountain Car environment (#1394).
-
Fix intermittently failing tests (#1387).
-
Add big-batch SGD (BBSGD) optimizer in src/mlpack/core/optimizers/bigbatch_sgd/ (#1131).
-
Fix simple compiler warnings (#1380, #1373).
-
Simplify NeighborSearch constructor and Train() overloads (#1378).
-
Add warning for OpenMP setting differences (#1358/#1382). When mlpack is compiled with OpenMP but another application is not (or vice versa), a compilation warning will now be issued.
-
Restructured loss functions in src/mlpack/methods/ann/ (#1365).
-
Add environments for reinforcement learning tests (#1368, #1370, #1329).
-
Allow single outputs for multiple timestep inputs for recurrent neural networks (#1348).
-
Add He and LeCun normal initializations for neural networks (#1342). Neural networks: add He and LeCun normal initializations (#1342), add FReLU and SELU activation functions (#1346, #1341), add alpha-dropout (#1349).
-
Speed and memory improvements for DBSCAN. --single_mode can now be used for situations where previously RAM usage was too high.
-
Bump minimum required version of Armadillo to 6.500.0.
-
Add automatically generated Python bindings. These have the same interface as the command-line programs.
-
Add deep learning infrastructure in src/mlpack/methods/ann/.
-
Add reinforcement learning infrastructure in src/mlpack/methods/reinforcement_learning/.
-
Add optimizers: AdaGrad, CMAES, CNE, FrankeWolfe, GradientDescent, GridSearch, IQN, Katyusha, LineSearch, ParallelSGD, SARAH, SCD, SGDR, SMORMS3, SPALeRA, SVRG.
-
Add hyperparameter tuning infrastructure and cross-validation infrastructure in src/mlpack/core/cv/ and src/mlpack/core/hpt/.
-
Fix bug in mean shift.
-
Add random forests (see src/mlpack/methods/random_forest).
-
Numerous other bugfixes and testing improvements.
-
Add randomized Krylov SVD and Block Krylov SVD.
-
Compilation fix for some systems (#1082).
-
Fix PARAM_INT_OUT() (#1100).
-
Speed and memory improvements for DBSCAN. --single_mode can now be used for situations where previously RAM usage was too high.
-
Fix bug in CF causing incorrect recommendations.
- Bug fix for --predictions_file in mlpack_decision_tree program.
-
Install backwards-compatibility mlpack_allknn and mlpack_allkfn programs; note they are deprecated and will be removed in mlpack 3.0.0 (#992).
-
Fix RStarTree bug that surfaced on OS X only (#964).
-
Small fixes for MiniBatchSGD and SGD and tests.
- Compilation fix for mlpack_nca and mlpack_test on older Armadillo versions (#984).
-
Bugfix for mlpack_knn program (#816).
-
Add decision tree implementation in methods/decision_tree/. This is very similar to a C4.5 tree learner.
-
Add DBSCAN implementation in methods/dbscan/.
-
Add support for multidimensional discrete distributions (#810, #830).
-
Better output for Log::Debug/Log::Info/Log::Warn/Log::Fatal for Armadillo objects (#895, #928).
-
Refactor categorical CSV loading with boost::spirit for faster loading (#681).
-
HMMs now use random initialization; this should fix some convergence issues (#828).
-
HMMs now initialize emissions according to the distribution of observations (#833).
-
Minor fix for formatted output (#814).
-
Fix DecisionStump to properly work with any input type.
-
Fixed CoverTree to properly handle single-point datasets.
-
Fixed a bug in CosineTree (and thus QUIC-SVD) that caused split failures for some datasets (#717).
-
Added mlpack_preprocess_describe program, which can be used to print statistics on a given dataset (#742).
-
Fix prioritized recursion for k-furthest-neighbor search (mlpack_kfn and the KFN class), leading to orders-of-magnitude speedups in some cases.
-
Bump minimum required version of Armadillo to 4.200.0.
-
Added simple Gradient Descent optimizer, found in src/mlpack/core/optimizers/gradient_descent/ (#792).
-
Added approximate furthest neighbor search algorithms QDAFN and DrusillaSelect in src/mlpack/methods/approx_kfn/, with command-line program mlpack_approx_kfn.
-
Added multiprobe LSH (#691). The parameter 'T' to LSHSearch::Search() can now be used to control the number of extra bins that are probed, as can the -T (--num_probes) option to mlpack_lsh.
-
Added the Hilbert R tree to src/mlpack/core/tree/rectangle_tree/ (#664). It can be used as the typedef HilbertRTree, and it is now an option in the mlpack_knn, mlpack_kfn, mlpack_range_search, and mlpack_krann command-line programs.
-
Added the mlpack_preprocess_split and mlpack_preprocess_binarize programs, which can be used for preprocessing code (#650, #666).
-
Added OpenMP support to LSHSearch and mlpack_lsh (#700).
-
Added the function LSHSearch::Projections(), which returns an arma::cube with each projection table in a slice (#663). Instead of Projection(i), you should now use Projections().slice(i).
-
A new constructor has been added to LSHSearch that creates objects using projection tables provided in an arma::cube (#663).
-
Handle zero-variance dimensions in DET (#515).
-
Add MiniBatchSGD optimizer (src/mlpack/core/optimizers/minibatch_sgd/) and allow its use in mlpack_logistic_regression and mlpack_nca programs.
-
Add better backtrace support from Grzegorz Krajewski for Log::Fatal messages when compiled with debugging and profiling symbols. This requires libbfd and libdl to be present during compilation.
-
CosineTree test fix from Mikhail Lozhnikov (#358).
-
Fixed HMM initial state estimation (#600).
-
Changed versioning macros __MLPACK_VERSION_MAJOR, __MLPACK_VERSION_MINOR, and __MLPACK_VERSION_PATCH to MLPACK_VERSION_MAJOR, MLPACK_VERSION_MINOR, and MLPACK_VERSION_PATCH. The old names will remain in place until mlpack 3.0.0.
-
Renamed mlpack_allknn, mlpack_allkfn, and mlpack_allkrann to mlpack_knn, mlpack_kfn, and mlpack_krann. The mlpack_allknn, mlpack_allkfn, and mlpack_allkrann programs will remain as copies until mlpack 3.0.0.
-
Add --random_initialization option to mlpack_hmm_train, for use when no labels are provided.
-
Add --kill_empty_clusters option to mlpack_kmeans and KillEmptyClusters policy for the KMeans class (#595, #596).
-
Fix CMake to properly detect when MKL is being used with Armadillo.
-
Minor parameter handling fixes to mlpack_logistic_regression (#504, #505).
-
Properly install arma_config.hpp.
-
Memory handling fixes for Hoeffding tree code.
-
Add functions that allow changing training-time parameters to HoeffdingTree class.
-
Fix infinite loop in sparse coding test.
-
Documentation spelling fixes (#501).
-
Properly handle covariances for Gaussians with large condition number (#496), preventing GMMs from filling with NaNs during training (and also HMMs that use GMMs).
-
CMake fixes for finding LAPACK and BLAS as Armadillo dependencies when ATLAS is used.
-
CMake fix for projects using mlpack's CMake configuration from elsewhere (#512).
-
Removed overclustering support from k-means because it is not well-tested, may be buggy, and is (I think) unused. If this was support you were using, open a bug or get in touch with us; it would not be hard for us to reimplement it.
-
Refactored KMeans to allow different types of Lloyd iterations.
-
Added implementations of k-means: Elkan's algorithm, Hamerly's algorithm, Pelleg-Moore's algorithm, and the DTNN (dual-tree nearest neighbor) algorithm.
-
Significant acceleration of LRSDP via the use of accu(a % b) instead of trace(a * b).
-
Added MatrixCompletion class (matrix_completion), which performs nuclear norm minimization to fill unknown values of an input matrix.
-
No more dependence on Boost.Random; now we use C++11 STL random support.
-
Add softmax regression, contributed by Siddharth Agrawal and QiaoAn Chen.
-
Changed NeighborSearch, RangeSearch, FastMKS, LSH, and RASearch API; these classes now take the query sets in the Search() method, instead of in the constructor.
-
Use OpenMP, if available. For now OpenMP support is only available in the DET training code.
-
Add support for predicting new test point values to LARS and the command-line 'lars' program.
-
Add serialization support for Perceptron and LogisticRegression.
-
Refactor SoftmaxRegression to predict into an arma::Row<size_t> object, and add a softmax_regression program.
-
Refactor LSH to allow loading and saving of models.
-
ToString() is removed entirely (#487).
-
Add --input_model_file and --output_model_file options to appropriate machine learning algorithms.
-
Rename all executables to start with an "mlpack" prefix (#229).
-
Add HoeffdingTree and mlpack_hoeffding_tree, an implementation of the streaming decision tree methodology from Domingos and Hulten in 2000.
- Switch to 3-clause BSD license (from LGPL).
-
Proper handling of dimension calculation in PCA.
-
Load parameter vectors properly for LinearRegression models.
-
Linker fixes for AugLagrangian specializations under Visual Studio.
-
Add support for observation weights to LinearRegression.
-
MahalanobisDistance<> now takes the root of the distance by default and therefore satisfies the triangle inequality (TakeRoot now defaults to true).
-
Better handling of optional Armadillo HDF5 dependency.
-
Fixes for numerous intermittent test failures.
-
math::RandomSeed() now sets the random seed for recent (>=3.930) Armadillo versions.
-
Handle Newton method convergence better for SparseCoding::OptimizeDictionary() and make maximum iterations a parameter.
-
Known bug: CosineTree construction may fail in some cases on i386 systems (#358).
-
Bugfix for NeighborSearch regression which caused very slow allknn/allkfn. Speeds are now restored to approximately 1.0.8 speeds, with significant improvement for the cover tree (#347).
-
Detect dependencies correctly when ARMA_USE_WRAPPER is not being defined (i.e., libarmadillo.so does not exist).
-
Bugfix for compilation under Visual Studio (#348).
-
GMM initialization is now safer and provides a working GMM when constructed with only the dimensionality and number of Gaussians (#301).
-
Check for division by 0 in Forward-Backward Algorithm in HMMs (#301).
-
Fix MaxVarianceNewCluster (used when re-initializing clusters for k-means) (#301).
-
Fixed implementation of Viterbi algorithm in HMM::Predict() (#303).
-
Significant speedups for dual-tree algorithms using the cover tree (#235, #314) including a faster implementation of FastMKS.
-
Fix for LRSDP optimizer so that it compiles and can be used (#312).
-
CF (collaborative filtering) now expects users and items to be zero-indexed, not one-indexed (#311).
-
CF::GetRecommendations() API change: now requires the number of recommendations as the first parameter. The number of users in the local neighborhood should be specified with CF::NumUsersForSimilarity().
-
Removed incorrect PeriodicHRectBound (#58).
-
Refactor LRSDP into LRSDP class and standalone function to be optimized (#305).
-
Fix for centering in kernel PCA (#337).
-
Added simulated annealing (SA) optimizer, contributed by Zhihao Lou.
-
HMMs now support initial state probabilities; these can be set in the constructor, trained, or set manually with HMM::Initial() (#302).
-
Added Nyström method for kernel matrix approximation by Marcus Edel.
-
Kernel PCA now supports using Nyström method for approximation.
-
Ball trees now work with dual-tree algorithms, via the BallBound<> bound structure (#307); fixed by Yash Vadalia.
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The NMF class is now AMF<>, and supports far more types of factorizations, by Sumedh Ghaisas.
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A QUIC-SVD implementation has returned, written by Siddharth Agrawal and based on older code from Mudit Gupta.
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Added perceptron and decision stump by Udit Saxena (these are weak learners for an eventual AdaBoost class).
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Sparse autoencoder added by Siddharth Agrawal.
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Memory leak in NeighborSearch index-mapping code fixed (#298).
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GMMs can be trained using the existing model as a starting point by specifying an additional boolean parameter to GMM::Estimate() (#296).
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Logistic regression implementation added in methods/logistic_regression (see also #293).
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L-BFGS optimizer now returns its function via Function().
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Version information is now obtainable via mlpack::util::GetVersion() or the __MLPACK_VERSION_MAJOR, __MLPACK_VERSION_MINOR, and __MLPACK_VERSION_PATCH macros (#297).
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Fix typos in allkfn and allkrann output.
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Cover tree support for range search (range_search), rank-approximate nearest neighbors (allkrann), minimum spanning tree calculation (emst), and FastMKS (fastmks).
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Dual-tree FastMKS implementation added and tested.
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Added collaborative filtering package (cf) that can provide recommendations when given users and items.
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Fix for correctness of Kernel PCA (kernel_pca) (#270).
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Speedups for PCA and Kernel PCA (#198).
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Fix for correctness of Neighborhood Components Analysis (NCA) (#279).
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Minor speedups for dual-tree algorithms.
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Fix for Naive Bayes Classifier (nbc) (#269).
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Added a ridge regression option to LinearRegression (linear_regression) (#286).
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Gaussian Mixture Models (gmm::GMM<>) now support arbitrary covariance matrix constraints (#283).
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MVU (mvu) removed because it is known to not work (#183).
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Minor updates and fixes for kernels (in mlpack::kernel).
- Minor bugfix so that FastMKS gets built.
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Speedups of cover tree traversers (#235).
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Addition of rank-approximate nearest neighbors (RANN), found in src/mlpack/methods/rann/.
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Addition of fast exact max-kernel search (FastMKS), found in src/mlpack/methods/fastmks/.
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Fix for EM covariance estimation; this should improve GMM training time.
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More parameters for GMM estimation.
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Force GMM and GaussianDistribution covariance matrices to be positive definite, so that training converges much more often.
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Add parameter for the tolerance of the Baum-Welch algorithm for HMM training.
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Fix for compilation with clang compiler.
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Fix for k-furthest-neighbor-search.
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Force minimum Armadillo version to 2.4.2.
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Better output of class types to streams; a class with a ToString() method implemented can be sent to a stream with operator<<.
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Change return type of GMM::Estimate() to double (#257).
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Style fixes for k-means and RADICAL.
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Handle size_t support correctly with Armadillo 3.6.2 (#258).
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Add locality-sensitive hashing (LSH), found in src/mlpack/methods/lsh/.
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Better tests for SGD (stochastic gradient descent) and NCA (neighborhood components analysis).
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Remove internal sparse matrix support because Armadillo 3.4.0 now includes it. When using Armadillo versions older than 3.4.0, sparse matrix support is not available.
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NCA (neighborhood components analysis) now support an arbitrary optimizer (#245), including stochastic gradient descent (#249).
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Added density estimation trees, found in src/mlpack/methods/det/.
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Added non-negative matrix factorization, found in src/mlpack/methods/nmf/.
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Added experimental cover tree implementation, found in src/mlpack/core/tree/cover_tree/ (#157).
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Better reporting of boost::program_options errors (#225).
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Fix for timers on Windows (#212, #211).
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Fix for allknn and allkfn output (#204).
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Sparse coding dictionary initialization is now a template parameter (#220).
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Added kernel principal components analysis (kernel PCA), found in src/mlpack/methods/kernel_pca/ (#74).
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Fix for Lovasz-Theta AugLagrangian tests (#182).
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Fixes for allknn output (#185, #186).
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Added range search executable (#192).
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Adapted citations in documentation to BibTeX; no citations in -h output (#195).
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Stop use of 'const char*' and prefer 'std::string' (#176).
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Support seeds for random numbers (#177).
- Initial release. See any resolved tickets numbered less than #196 or execute this query: http://www.mlpack.org/trac/query?status=closed&milestone=mlpack+1.0.0