Key | Value |
---|---|
FileName | ./usr/lib64/R/library/regressoR/html/00Index.html |
FileSize | 6342 |
MD5 | 95CE14E02F553AC7154C0C2E79B9683B |
SHA-1 | 2F44C549B852B81838936FBC939AC24652848F3B |
SHA-256 | E37CDB1BFB530C6E8E168BDE84DF5D159A823598B807FD35B2796899B8FAF85D |
SSDEEP | 96:1zvrK4H90V15GRwM7xVoJy5qCo5mBwIwMKc9K3ejahRnQciioXcS+wMI+FQwwMSf:Aq9o1EK6uQvL0UwrEK7u |
TLSH | T115D103D2A1D25C7D014A16BCAAA53EBD16E102F427C21D449F3B7CFBAB427B582532C7 |
hashlookup:parent-total | 4 |
hashlookup:trust | 70 |
The searched file hash is included in 4 parent files which include package known and seen by metalookup. A sample is included below:
Key | Value |
---|---|
MD5 | 411117AC6ECC5429E11FAA49882BFF39 |
PackageArch | x86_64 |
PackageDescription | Perform a supervised data analysis on a database through a 'shiny' graphical interface. It includes methods such as linear regression, penalized regression, k-nearest neighbors, decision trees, ada boosting, extreme gradient boosting, random forest, neural networks, deep learning and support vector machines. |
PackageName | R-regressoR |
PackageRelease | lp152.1.1 |
PackageVersion | 2.0.1 |
SHA-1 | D790ADC3EA87C2A9CDFD80DB379564250E434E18 |
SHA-256 | E821FED89F44020FDB9787A437A09BC348FF967DE1548D38DEB0642C81A63D53 |
Key | Value |
---|---|
MD5 | 66EB82D3D75EEE0D1F14992D9B28F860 |
PackageArch | x86_64 |
PackageDescription | Perform a supervised data analysis on a database through a 'shiny' graphical interface. It includes methods such as linear regression, penalized regression, k-nearest neighbors, decision trees, ada boosting, extreme gradient boosting, random forest, neural networks, deep learning and support vector machines. |
PackageName | R-regressoR |
PackageRelease | lp153.1.1 |
PackageVersion | 2.0.1 |
SHA-1 | 6EBF19B40D9944CF4F2D7965FF83C2561FE6C486 |
SHA-256 | 68EE6F69FA3B460CCA3BFE5D1CAC7817232A4EFA2BB3A146F31A13A4C67F4BE9 |
Key | Value |
---|---|
MD5 | BD5F3932A816F45F639A2174E0C009CC |
PackageArch | x86_64 |
PackageDescription | Perform a supervised data analysis on a database through a 'shiny' graphical interface. It includes methods such as linear regression, penalized regression, k-nearest neighbors, decision trees, ada boosting, extreme gradient boosting, random forest, neural networks, deep learning and support vector machines. |
PackageName | R-regressoR |
PackageRelease | lp154.1.1 |
PackageVersion | 2.0.1 |
SHA-1 | EC52D06F3414F5B3FDE78A8E5AF2D1D79DA42538 |
SHA-256 | ED116C9F7084BF73B41A95FD3B04EAD7AD4523C39DF2E811E9B6D1DF8EDDEA6C |
Key | Value |
---|---|
MD5 | 270D6E8A4BA4F05751D40B83D6A91157 |
PackageArch | x86_64 |
PackageDescription | Perform a supervised data analysis on a database through a 'shiny' graphical interface. It includes methods such as linear regression, penalized regression, k-nearest neighbors, decision trees, ada boosting, extreme gradient boosting, random forest, neural networks, deep learning and support vector machines. |
PackageName | R-regressoR |
PackageRelease | 1.1 |
PackageVersion | 2.0.1 |
SHA-1 | F9AABAE08741D58DE75F397DAFA099CF5B84024F |
SHA-256 | 7C71391E51893E5085007813EF2D8864A412A9AE215017530925EE5641A56899 |