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path: users/test-*
=====================README====================
Polyvore-1000 Dataset
Welcome! I am Waly NGOM, PhD in Mathematics and passionate about Artificial Intelligence. This repository contains Polyvore-1000, a dataset designed for personalized recommendation in the fashion domain.
Polyvore-1000 builds upon the Polyvore-U splits introduced by Han et al. (2017) and benefits from the complementary work of Lu et al. (CVPR 2019), who proposed an innovative binary-code based approach for efficient outfit recommendation.
Data Structure
a. Available splits: train, valid, test (same proportions as Polyvore-U: 17,316 / 1,497 / 3,076 outfits).
b. Configurations:
items: detailed item data
kits: information on each outfit
users: synthetic user identifiers
interactions: interactions between users and items (outfit composition, views, likes)
user_profiles: aggregated user interaction profiles
Images
Images are organized in images//:
0.jpg → outfit (kit) image
1.jpg, 2.jpg, … → images corresponding to the items of the kit, in the order given by the JSON data
Hugging Face Authentication
In a notebook or Python script:
from huggingface_hub import login import os
login(token=os.getenv("HF_TOKEN"))
Usage
To load these datasets:
from datasets import load_dataset
items_ds = load_dataset("codewaly/polyvore1000", "items", split="train")
kits_ds = load_dataset("codewaly/polyvore1000", "kits", split="train")
users_ds = load_dataset("codewaly/polyvore1000", "users", split="train")
interactions_ds = load_dataset("codewaly/polyvore1000", "interactions", split="train")
user_profiles_ds = load_dataset("codewaly/polyvore1000", "user_profiles", split="train")
References
Han, X., et al. (2017). Learning Fashion Compatibility with Bidirectional LSTMs. ACM Multimedia.
Lu, Z., et al. (2019). Learning Binary Code for Personalized Fashion Recommendation. CVPR.