Result for 599A602D9EA2DC8581F2C86625EA7B02984AE560

Query result

Key Value
FileName./usr/lib64/R/library/ELMSO/html/00Index.html
FileSize1683
MD5B7871912691FF9D77F18BBF0841AFC43
SHA-1599A602D9EA2DC8581F2C86625EA7B02984AE560
SHA-256DF5AEE44FD96AF9FAA23034E9D582079A82B11ED26AB448C54D6152224E3E495
SSDEEP48:lmIzNLacpqpLwLayK4cVPYtlUtNWct7MtaHO:1zNq2JK4ocidcaHO
TLSHT199315466D0D1793E538A49A091E23D5C338202E06B522D845F6EBDF78B41FEA83F178D
hashlookup:parent-total4
hashlookup:trust70

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Parents (Total: 4)

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
MD568101C092A171C5B50AE5E4C669F4E14
PackageArchx86_64
PackageDescriptionAn implementation of the algorithm described in "Efficient Large- Scale Internet Media Selection Optimization for Online Display Advertising" by Paulson, Luo, and James (Journal of Marketing Research 2018; see URL below for journal text/citation and <http://faculty.marshall.usc.edu/gareth-james/Research/ELMSO.pdf> for a full-text version of the paper). The algorithm here is designed to allocate budget across a set of online advertising opportunities using a coordinate-descent approach, but it can be used in any resource-allocation problem with a matrix of visitation (in the case of the paper, website page- views) and channels (in the paper, websites). The package contains allocation functions both in the presence of bidding, when allocation is dependent on channel-specific cost curves, and when advertising costs are fixed at each channel.
PackageNameR-ELMSO
PackageReleaselp153.2.3
PackageVersion1.0.1
SHA-14B93F4F038D9BC32E02F6C87BBD38B17618F6B3E
SHA-2561416D2426189C114C288DED6F733F7FE4DEECD638F3275686224D91B746F4943
Key Value
MD58DC5D211A05E1CF1E9CA248B00FF5048
PackageArchx86_64
PackageDescriptionAn implementation of the algorithm described in "Efficient Large- Scale Internet Media Selection Optimization for Online Display Advertising" by Paulson, Luo, and James (Journal of Marketing Research 2018; see URL below for journal text/citation and <http://faculty.marshall.usc.edu/gareth-james/Research/ELMSO.pdf> for a full-text version of the paper). The algorithm here is designed to allocate budget across a set of online advertising opportunities using a coordinate-descent approach, but it can be used in any resource-allocation problem with a matrix of visitation (in the case of the paper, website page- views) and channels (in the paper, websites). The package contains allocation functions both in the presence of bidding, when allocation is dependent on channel-specific cost curves, and when advertising costs are fixed at each channel.
PackageNameR-ELMSO
PackageRelease2.21
PackageVersion1.0.1
SHA-1790F81FDE4A16BB742973A1F1BF029359F6412F2
SHA-25620D944660326116F8A696563EF9D033E392D0041FDCF076649D46E8A6B4AA9F0
Key Value
MD5D97F204FFC5051A0DB3AD27B6129847F
PackageArchx86_64
PackageDescriptionAn implementation of the algorithm described in "Efficient Large- Scale Internet Media Selection Optimization for Online Display Advertising" by Paulson, Luo, and James (Journal of Marketing Research 2018; see URL below for journal text/citation and <http://faculty.marshall.usc.edu/gareth-james/Research/ELMSO.pdf> for a full-text version of the paper). The algorithm here is designed to allocate budget across a set of online advertising opportunities using a coordinate-descent approach, but it can be used in any resource-allocation problem with a matrix of visitation (in the case of the paper, website page- views) and channels (in the paper, websites). The package contains allocation functions both in the presence of bidding, when allocation is dependent on channel-specific cost curves, and when advertising costs are fixed at each channel.
PackageNameR-ELMSO
PackageReleaselp152.2.6
PackageVersion1.0.1
SHA-1E6D1DAE6FBACCB930AC7706E62B4B7C99E230E50
SHA-256A0D887397F5115DED96DBF5AF18AAF39A39807A846EC3B46F59FDFEBFA5A27EE
Key Value
MD586CDB60703BCBA4A1E67B68986D0A1A6
PackageArchx86_64
PackageDescriptionAn implementation of the algorithm described in "Efficient Large- Scale Internet Media Selection Optimization for Online Display Advertising" by Paulson, Luo, and James (Journal of Marketing Research 2018; see URL below for journal text/citation and <http://faculty.marshall.usc.edu/gareth-james/Research/ELMSO.pdf> for a full-text version of the paper). The algorithm here is designed to allocate budget across a set of online advertising opportunities using a coordinate-descent approach, but it can be used in any resource-allocation problem with a matrix of visitation (in the case of the paper, website page- views) and channels (in the paper, websites). The package contains allocation functions both in the presence of bidding, when allocation is dependent on channel-specific cost curves, and when advertising costs are fixed at each channel.
PackageMaintainerhttps://www.suse.com/
PackageNameR-ELMSO
PackageReleaselp154.2.1
PackageVersion1.0.1
SHA-18719E1D28831FE704C5ED4B4A6B07B8A91FA7E80
SHA-25689E84239E5DFDEB422334EB924E20EA06AA6226EBA14C8F19D64F14A6BA84E9A