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Recency-Frequency based recommendation scoring

Project description

rfscorer

CI PyPI version Python Versions

rfscorer is a Python package for Recency-Frequency based recommendation scoring.

It estimates revisit probabilities — the preference score for each user-item pair, forming a matrix analogous to a rating matrix — from interaction histories, using two simple but powerful behavioral signals: recency, which captures how recently a user interacted with an item, and frequency, which captures how often the user has interacted with it.

The package is designed for product recommendation and revisit modeling, especially in settings where interpretable scoring based on interaction history is preferred over black-box recommendation models.

Note: In this package, RF stands for Recency-Frequency, not Random Forest.

Features

  • scikit-learn-style API — familiar fit() / transform() interface makes it easy to integrate into existing data science workflows
  • Minimal data requirements — works with any interaction log that has three columns: user, item, and datetime; no ratings or explicit feedback needed
  • Explainable scoring — probabilities are derived through mathematical optimization under RF monotonicity constraints, making every score fully traceable and auditable; 3D surface visualization further supports intuitive understanding
  • Probabilistic output — revisit probabilities serve as preference scores, enabling expected value calculations and probabilistic ranking of recommendations
  • Extensible — the user–item probability matrix produced by transform() can be directly used as input to collaborative filtering or other downstream recommendation models

Installation

pip install rfscorer

Usage

import pandas as pd
from rfscorer import RecencyFrequencyScorer

Prepare an interaction log with three columns: user, item, and datetime. The same user-item pair may appear multiple times, representing repeat visits.

user item datetime
u_001 i_032 2026-07-01
u_001 i_017 2026-07-03
u_001 i_032 2026-07-05
u_002 i_011 2026-07-02
u_002 i_058 2026-07-04

Split users into training and test sets, then split each by target_date into an observation window and an evaluation window.

target_date = "2026-07-07"

df_train_obs  = df_train[df_train.datetime <= target_date]
df_train_eval = df_train[df_train.datetime >  target_date]

Call fit() to estimate empirical revisit probabilities. Recency and frequency are computed from the observation window; the evaluation window provides ground-truth revisit labels.

scorer = RecencyFrequencyScorer()
scorer.fit(df_train_obs, df_train_eval)

The empirical surface reflects raw revisit rates and may be irregular due to sparse data.

fig = scorer.plot_probability_surface(kind="emp")

empirical probability surface

Call optimize() to smooth the surface under RF monotonicity constraints using convex quadratic programming. kind="mono" enforces recency and frequency monotonicity.

scorer.optimize(kind="mono")
fig = scorer.plot_probability_surface(kind="mono")

mono probability surface

kind="mcc" additionally adds convexity in recency and concavity in frequency, yielding a smoother surface.

scorer.optimize(kind="mcc")
fig = scorer.plot_probability_surface(kind="mcc")

mcc probability surface

Call transform() to score each user-item pair in the test observation window. It returns a DataFrame with columns user, item, recency, frequency, probability, and order (rank within each user, sorted by probability descending).

df_test_obs  = df_test[df_test.datetime <= target_date]
df_test_eval = df_test[df_test.datetime >  target_date]

df_rec = scorer.transform(df_test_obs, target_date, kind="mcc")
user item recency frequency probability order
u_001 i_032 1 4 0.1167 1
u_001 i_017 2 3 0.0789 2
u_001 i_045 3 1 0.0248 3
u_002 i_011 1 2 0.0621 1
u_002 i_058 4 1 0.0182 2

Within each user, rows are sorted by probability descending; order represents the recommendation rank.

Call evaluate() to measure recommendation quality at each rank cutoff. It returns precision, recall, and F1 for each cutoff from 1 to order.

scorer.evaluate(df_rec, df_test_eval, order=5)

Examples

References

Citation

If you use rfscorer in academic work, please cite the following paper:

@article{Iwanaga2016,
  author  = {Jiro Iwanaga and Naoki Nishimura and Noriyoshi Sukegawa and Yuichi Takano},
  title   = {Estimating product-choice probabilities from recency and frequency of page views},
  journal = {Knowledge-Based Systems},
  volume  = {99},
  pages   = {157--167},
  year    = {2016},
  url     = {https://www.sciencedirect.com/science/article/abs/pii/S0950705116000848}
}

If you additionally use the probability matrix as input to a collaborative filtering model, please also cite:

@article{Iwanaga2019,
  author  = {Jiro Iwanaga and Naoki Nishimura and Noriyoshi Sukegawa and Yuichi Takano},
  title   = {Improving collaborative filtering recommendations by estimating user preferences from clickstream data},
  journal = {Electronic Commerce Research and Applications},
  volume  = {37},
  pages   = {100877},
  year    = {2019},
  url     = {https://www.sciencedirect.com/science/article/abs/pii/S1567422319300547}
}

License

MIT License

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