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py-grex/pygrex/explain/individual/model_based_als_explain.py
2026-05-22 10:02:10 +02:00

52 lines
1.9 KiB
Python

import numpy as np
import pandas as pd
from .explainer import Explainer
class ALSExplainer(Explainer):
def __init__(self, model, recommendations, data, number_of_contributions=10):
super(ALSExplainer, self).__init__(model, recommendations, data)
self.number_of_contributions = number_of_contributions
def explain_recommendation_to_user(self, user_id: int, item_id: int):
"""
Measuring the contribution of each item to the recommendation.
:param model:
:param item_id:
:param user_id:
:return: returns a dataframe with the contribution to the recommendation of each previously interacted with item.
"""
current_interactions = np.zeros(self.num_items)
current_interactions[self.get_user_items(user_id)] = 1
c_u = np.diag(current_interactions)
y_t = self.model.item_embedding().transpose()
temp = np.matmul(y_t, c_u)
temp = np.matmul(temp, self.model.item_embedding())
temp = temp + np.diag([self.model.reg_term] * self.model.latent_dim)
if len(self.get_user_items(user_id)) > 1:
weight_mtr = np.linalg.inv(temp)
else:
weight_mtr = np.linalg.pinv(temp)
temp = np.matmul(self.model.item_embedding(), weight_mtr)
sim_to_rec_id = temp.dot(self.model.item_embedding()[item_id, :])
sim_to_rec_id = sim_to_rec_id[self.get_user_items(user_id)]
contribution = {
"item": self.get_user_items(user_id),
"contribution": sim_to_rec_id,
}
contribution = pd.DataFrame(contribution)
contribution = contribution.sort_values(by=["contribution"], ascending=False)
return {
"item": contribution.item[: self.number_of_contributions],
"contribution": contribution.contribution[: self.number_of_contributions],
}