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pcrl_example.py
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pcrl_example.py
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# Copyright 2018 The Cornac Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
# ============================================================================
"""Fit to and evaluate PCRL [1] on the Office Amazon dataset.
[1] Salah, Aghiles, and Hady W. Lauw. Probabilistic Collaborative Representation Learning\
for Personalized Item Recommendation. In UAI 2018.
"""
from cornac.data import GraphModality
from cornac.eval_methods import RatioSplit
from cornac.experiment import Experiment
from cornac import metrics
from cornac.models import PCRL
from cornac.datasets import amazon_office as office
# PCRL jointly models user preferences and performs deep item features learning from auxiliary data (e.g., item relations).
# The necessary data can be loaded as follows
ratings = office.load_feedback()
contexts = office.load_graph()
# Instantiate a GraphModality, it makes it convenient to work with graph (network) auxiliary information
# For more details, please refer to the tutorial on how to work with auxiliary data
item_graph_modality = GraphModality(data=contexts)
# Define an evaluation method to split feedback into train and test sets
ratio_split = RatioSplit(
data=ratings,
test_size=0.2,
rating_threshold=3.5,
exclude_unknowns=True,
verbose=True,
item_graph=item_graph_modality,
)
# Instantiate PCRL
pcrl = PCRL(k=100, z_dims=[300], max_iter=300, learning_rate=0.001)
# Evaluation metrics
nDgc = metrics.NDCG(k=-1)
rec = metrics.Recall(k=20)
pre = metrics.Precision(k=20)
# Put everything together into an experiment and run it
Experiment(eval_method=ratio_split, models=[pcrl], metrics=[nDgc, rec, pre]).run()
"""
Output:
| NDCG@-1 | Recall@20 | Precision@20 | Train (s) | Test (s)
---- + ------- + --------- + ------------ + --------- + --------
pcrl | 0.1922 | 0.0862 | 0.0148 | 2591.4878 | 4.0957
*Results may change slightly from one run to another due to different random initial parameters
"""