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Sparse Matrix Recommender package based on SSparseMatrix objects.

Project description

Sparse Matrix Recommender (SMR) Python package

Introduction

This Python package, SparseMatrixRecommender, has different functions for computations of recommendations based on (user) profile or history using Sparse Linear Algebra (SLA). The package mirrors the Mathematica implementation [AAp1]. (There is also a corresponding implementation in R; see [AAp2]).

The package is based on a certain "standard" Information retrieval paradigm -- it utilizes Latent Semantic Indexing (LSI) functions like IDF, TF-IDF, etc. Hence, the package also has document-term matrix creation functions and LSI application functions. I included them in the package since I wanted to minimize the external package dependencies.

The package includes two data-sets dfTitanic and dfMushroom in order to make easier the writing of introductory examples and unit tests.

For more theoretical description see the article "Mapping Sparse Matrix Recommender to Streams Blending Recommender" , [AA1].

For detailed examples see the files "SMR-experiments-large-data.py" and "SMR-creation-from-long-form.py".

The list of features and its implementation status is given in the org-mode file "SparseMatrixRecommender-work-plan.org".


Workflows

Here is a diagram that encompasses the workflows this package supports (or will support):

SMR-workflows

Here is a diagram of typical pipeline building using a SparseMatrixRecommender object:

SMRMon-pipeline-Python


Installation

To install from GitHub use the shell command:

python -m pip install git+https://github.com/antononcube/Python-packages.git#egg=SparseMatrixRecommender\&subdirectory=SparseMatrixRecommender

To install from PyPI:

python -m pip install SparseMatrixRecommender

Related Python packages

This package is based on the Python package SSparseMatrix, [AAp5].

The package LatentSemanticAnalyzer, [AAp6], uses the cross tabulation and LSI functions of this package.


Usage example

Here is an example of an SMR pipeline for creation of a recommender over Titanic data and recommendations for the profile "passengerSex:male" and "passengerClass:1st":

from SparseMatrixRecommender.SparseMatrixRecommender import *
from SparseMatrixRecommender.DataLoaders import *

dfTitanic = load_titanic_data_frame()

smrObj = (SparseMatrixRecommender()
          .create_from_wide_form(data = dfTitanic, 
                                 item_column_name="id", 
                                 columns=None, 
                                 add_tag_types_to_column_names=True, 
                                 tag_value_separator=":")
          .apply_term_weight_functions(global_weight_func = "IDF", 
                                       local_weight_func = "None", 
                                       normalizer_func = "Cosine")
          .recommend_by_profile(profile=["passengerSex:male", "passengerClass:1st"], 
                                nrecs=12)
          .join_across(data=dfTitanic, on="id")
          .echo_value())

Remark: More examples can be found the directory "./examples".


Related Mathematica packages

The software monad Mathematica package "MonadicSparseMatrixRecommender.m" [AAp1], provides recommendation pipelines similar to the pipelines created with this package.

Here is a Mathematica monadic pipeline that corresponds to the Python pipeline above:

smrObj =
  SMRMonUnit[]
   SMRMonCreate[dfTitanic, "id", 
                "AddTagTypesToColumnNames" -> True, 
                "TagValueSeparator" -> ":"]
   SMRMonApplyTermWeightFunctions["IDF", "None", "Cosine"]
   SMRMonRecommendByProfile[{"passengerSex:male", "passengerClass:1st"}, 12]
   SMRMonJoinAcross[dfTitanic, "id"]
   SMRMonEchoValue[];   

(Compare the pipeline diagram above with the corresponding diagram using Mathematica notation .)


Related R packages

The package SMRMon-R, [AAp2], implements a software monad for SMR workflows. Most of SMRMon-R functions delegate to SparseMatrixRecommender.

The package SparseMatrixRecommenderInterfaces, [AAp3], provides functions for interactive Shiny interfaces for the recommenders made with SparseMatrixRecommender and/or SMRMon-R.

The package LSAMon-R, [AAp4], can be used to make matrices for SparseMatrixRecommender and/or SMRMon-R.

Here is the SMRMon-R pipeline that corresponds to the Python pipeline above:

smrObj <-
  SMRMonCreate( data = dfTitanic, 
                itemColumnName = "id", 
                addTagTypesToColumnNamesQ = TRUE, 
                sep = ":") %>%
  SMRMonApplyTermWeightFunctions(globalWeightFunction = "IDF", 
                                 localWeightFunction = "None", 
                                 normalizerFunction = "Cosine") %>%
  SMRMonRecommendByProfile( profile = c("passengerSex:male", "passengerClass:1st"), 
                            nrecs = 12) %>%
  SMRMonJoinAcross( data = dfTitanic, by = "id") %>%
  SMRMonEchoValue

References

Articles

[AA1] Anton Antonov, "Mapping Sparse Matrix Recommender to Streams Blending Recommender" (2017), MathematicaForPrediction at GitHub.

Mathematica and R Packages

[AAp1] Anton Antonov, Monadic Sparse Matrix Recommender Mathematica package, (2018), MathematicaForPrediction at GitHub.

[AAp2] Anton Antonov, Sparse Matrix Recommender Monad in R (2019), R-packages at GitHub/antononcube.

[AAp3] Anton Antonov, Sparse Matrix Recommender framework interface functions (2019), R-packages at GitHub/antononcube.

[AAp4] Anton Antonov, Latent Semantic Analysis Monad in R (2019), R-packages at GitHub/antononcube.

Python packages

[AAp5] Anton Antonov, SSparseMatrix package in Python (2021), Python-packages at GitHub/antononcube.

[AAp6] Anton Antonov, LatentSemanticAnalyzer package in Python (2021), Python-packages at GitHub/antononcube.

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