Result for 00348C74E2FE881D29C803CF54E6F4555F3A6909

Query result

Key Value
FileName./usr/share/doc/shogun/html/functions_~.html
FileSize106868
MD568CEE80F99233EAFFDA9CF5E8C269224
SHA-100348C74E2FE881D29C803CF54E6F4555F3A6909
SHA-25675703F9804F5A7BA92D08CF0153C0824B5A1668FBE9E90D9BDF4DDB8655413BA
SSDEEP768:VuTRAYcTtaBYMmLwOlW1nhBfoNOhfRY95QIbC7xDAAq5agTgnptJYOptdh+0pvQD:VuTunoawgQIzMj6Oozlt+cbR
TLSHT10CA341180202897663DB72E49EBC93287A631D56F0115A7AB5F4CF913B5BFD21FB201E
hashlookup:parent-total2
hashlookup:trust60

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Parents (Total: 2)

The searched file hash is included in 2 parent files which include package known and seen by metalookup. A sample is included below:

Key Value
MD552FD8EB8EC2348D1E76EF4C3774BD7AE
PackageArchaarch64
PackageDescription The SHOGUN machine learning toolbox's focus is on large scale kernel methods and especially on Support Vector Machines (SVM). It provides a generic SVM object interfacing to several different SVM implementations, among them the state of the art LibSVM. Each of the SVMs can be combined with a variety of kernels. The toolbox not only provides efficient implementations of the most common kernels, like the Linear, Polynomial, Gaussian and Sigmoid Kernel but also comes with a number of recent string kernels as e.g. the Locality Improved, Fischer, TOP, Spectrum, Weighted Degree Kernel (with shifts). For the latter the efficient LINADD optimizations are implemented. Also SHOGUN offers the freedom of working with custom pre-computed kernels. One of its key features is the "combined kernel" which can be constructed by a weighted linear combination of a number of sub-kernels, each of which not necessarily working on the same domain. An optimal sub-kernel weighting can be learned using Multiple Kernel Learning. Currently SVM 2-class classification and regression problems can be dealt with. However SHOGUN also implements a number of linear methods like Linear Discriminant Analysis (LDA), Linear Programming Machine (LPM), (Kernel) Perceptrons and features algorithms to train hidden Markov-models. The input feature-objects can be dense, sparse or strings and of type int/short/double/char and can be converted into different feature types. Chains of "pre-processors" (e.g. subtracting the mean) can be attached to each feature object allowing for on-the-fly pre-processing. This build comes WITHOUT support for Thorsten Joachim's `SVM^light`, because of it's 'no-redistribute', 'no-commercial-use' license. This package contains the ChangeLog, a very detailed documentation, and some great examples for shogun. If you need the Chinese API-docs, you would want to install shogun-doc-cn, too.
PackageMaintainerFedora Project
PackageNameshogun-doc
PackageRelease0.33.git20141224.d71e19a.fc22
PackageVersion3.2.0.1
SHA-16B425709841A847AA3FC7B9406D58797384F2D74
SHA-256C000A7DBAAA5718314D0FD8C3AFA5BC92E7673CEAB57EEBFC678AF86BD6CBE2D
Key Value
MD5238979F9A06BCB35AC13A0EC7212902F
PackageArchaarch64
PackageDescription The SHOGUN machine learning toolbox's focus is on large scale kernel methods and especially on Support Vector Machines (SVM). It provides a generic SVM object interfacing to several different SVM implementations, among them the state of the art LibSVM. Each of the SVMs can be combined with a variety of kernels. The toolbox not only provides efficient implementations of the most common kernels, like the Linear, Polynomial, Gaussian and Sigmoid Kernel but also comes with a number of recent string kernels as e.g. the Locality Improved, Fischer, TOP, Spectrum, Weighted Degree Kernel (with shifts). For the latter the efficient LINADD optimizations are implemented. Also SHOGUN offers the freedom of working with custom pre-computed kernels. One of its key features is the "combined kernel" which can be constructed by a weighted linear combination of a number of sub-kernels, each of which not necessarily working on the same domain. An optimal sub-kernel weighting can be learned using Multiple Kernel Learning. Currently SVM 2-class classification and regression problems can be dealt with. However SHOGUN also implements a number of linear methods like Linear Discriminant Analysis (LDA), Linear Programming Machine (LPM), (Kernel) Perceptrons and features algorithms to train hidden Markov-models. The input feature-objects can be dense, sparse or strings and of type int/short/double/char and can be converted into different feature types. Chains of "pre-processors" (e.g. subtracting the mean) can be attached to each feature object allowing for on-the-fly pre-processing. This build comes WITHOUT support for Thorsten Joachim's `SVM^light`, because of it's 'no-redistribute', 'no-commercial-use' license. This package contains the ChangeLog, a very detailed documentation, and some great examples for shogun. If you need the Chinese API-docs, you would want to install shogun-doc-cn, too.
PackageMaintainerFedora Project
PackageNameshogun-doc
PackageRelease0.33.git20141224.d71e19a.fc22
PackageVersion3.2.0.1
SHA-1A34E8EDB663192FBCD8365C7741B89EF5C161B57
SHA-2562D3E44CD953AE0DEF8265D9F11BAB16E687E364AF995F54167E7ECA23226ADBA