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Tools for recommendation systems development

Project description

ml-recsys-tools

Open source repo for various tools for recommender systems development work. Work in progress.

Main purpose is to provide a single API for various recommender packages to train, tune, evaluate and get data in and recommendations / similarities out.

Recommender models and tools:

  • LightFM package based recommender.

  • Spotlight package based implicit recommender.

  • Implicit package based ALS recommender.

  • Serving / Tuning / Evaluation features added for most recommenders:

    • Dataframes for all inputs and outputs
      • adding external features (for LightFM hybrid mode)
      • early stopping fit (for iterative models: LightFM, ALS, Spotlight)
      • hyperparameter search
      • fast batched methods for:
        • user recommendation sampling
        • similar items samplilng with different similarity measures
        • similar users sampling
        • evaluation by sampling and ranking
  • Additional recommender models:

    • Similarity based:
      • cooccurence (items, users)
      • generic similarity based (can be used with external features)
  • Ensembles:

    • subdivision based (multiple recommenders each on subset of data - e.g. geographical region):
      • geo based: simple grid, equidense grid, geo clustering
      • LightFM and cooccurrence based
    • combination based - combining recommendations from multiple recommenders
    • similarity combination based - similarity based recommender on similarities from multiple recommenders
    • cascade ensemble
  • Interaction dataframe and sparse matrix handlers / builders:

    • sampling, data splitting,
    • external features matrix creation (additional item features), with feature engineering: binning / one*hot encoding (via pandas_sklearn)
    • evaluation and ranking helpers
    • handlers for observations coupled with external features and features with geo coordinates
    • mappers for geo features, observations, recommendations, similarities etc.
  • Evaluation utils:

    • score reports on lightfm metrics (AUC, precision, recall, reciprocal)
    • n-DCG, and n-MRR metrics, n-precision / recall
    • references: best possible ranking and chance ranking
  • Utilities:

    • hyperparameter tuning utils (by skopt)
    • similarity calculation helpers (similarities, dot, top N, top N on sparse)
    • parallelism utils
    • sklearn transformer extenstions (for feature engineering)
    • google maps util for displaying geographical data
    • logging, debug printouts decorators and other isntrumentation and inspection tools
    • pandas utils
    • data helpers: redis, s3
  • Examples:

    • a basic example on movielens 1M demonstrating:
      • basic data ingestion without any item/user features
      • LightFM recommender: fit, evaluation, early stopping, hyper-param search, recommendations, similarities
      • Cooccurrence recommender
      • Two combination ensembles (Ranks and Simils)
  • Still to add:

    • add example in README.MD
    • add and reorganize examples
    • much more comments and docstrings
    • more tests

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