| Key | Value |
|---|---|
| FileName | ./usr/share/doc/weka-doc/doc/weka/core/pmml/package-summary.html |
| FileSize | 11372 |
| MD5 | 60CCB47AA75A251B973AE0CD5B9A818A |
| SHA-1 | 017163B3C8967C760DF6F68FCB10F0C05B887D50 |
| SHA-256 | 4D538517445A08745BE0FF5D97157930CAA2D7EFE64DFC312ECA4F9551BABFE4 |
| SSDEEP | 192:ZZi2lA7/inSxPZpFici9SBfu6AQj5L/mUUXEwZFP1IvZici9Sl:ZZi2lA7rPLFiciAfunyeU89rPivZiciq |
| TLSH | T15432423108D7283F095395D7A6B90F56B3C16B65D7204E29FBF8E63B1B40F81ED0929A |
| hashlookup:parent-total | 2 |
| hashlookup:trust | 60 |
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 |
|---|---|
| FileSize | 5494416 |
| MD5 | 462631619AC4C6E4819F2FACA733D485 |
| PackageDescription | documentation for the Weka machine learning suite Weka is a collection of machine learning algorithms in Java that can either be used from the command-line, or called from your own Java code. Weka is also ideally suited for developing new machine learning schemes. . Implemented schemes cover decision tree inducers, rule learners, model tree generators, support vector machines, locally weighted regression, instance-based learning, bagging, boosting, and stacking. Also included are clustering methods, and an association rule learner. Apart from actual learning schemes, Weka also contains a large variety of tools that can be used for pre-processing datasets. . This package contains the documentation. |
| PackageMaintainer | Debian Java Maintainers <pkg-java-maintainers@lists.alioth.debian.org> |
| PackageName | weka-doc |
| PackageSection | doc |
| PackageVersion | 3.6.14-2 |
| SHA-1 | 600200DCE8BDA4D283868645941D907DCD9B7373 |
| SHA-256 | 8361ECEE91A0D59C84CCA6CFD5F869673ADBD325E01CB19E4863AF54F9541FE6 |
| Key | Value |
|---|---|
| FileSize | 5493508 |
| MD5 | 1D0354D28800071DA8401B87DD2BE7FA |
| PackageDescription | documentation for the Weka machine learning suite Weka is a collection of machine learning algorithms in Java that can either be used from the command-line, or called from your own Java code. Weka is also ideally suited for developing new machine learning schemes. . Implemented schemes cover decision tree inducers, rule learners, model tree generators, support vector machines, locally weighted regression, instance-based learning, bagging, boosting, and stacking. Also included are clustering methods, and an association rule learner. Apart from actual learning schemes, Weka also contains a large variety of tools that can be used for pre-processing datasets. . This package contains the documentation. |
| PackageMaintainer | Ubuntu Developers <ubuntu-devel-discuss@lists.ubuntu.com> |
| PackageName | weka-doc |
| PackageSection | doc |
| PackageVersion | 3.6.14-2 |
| SHA-1 | 3F9E10B43C21ED9D66CF02CC1808C0A200694264 |
| SHA-256 | 946C2432DEB84450B8F029A50061A4986FC8EFA1DC76415432DCF5CEBB04F3E3 |