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---
dataset_info:
- config_name: interactions
features:
- name: user_id
dtype: string
- name: item_id
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- name: interaction_type
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configs:
- config_name: interactions
data_files:
- split: train
path: interactions/train-*
- split: valid
path: interactions/valid-*
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path: interactions/test-*
- config_name: items
data_files:
- split: train
path: items/train-*
- split: valid
path: items/valid-*
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- config_name: kits
data_files:
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data_files:
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---
=====================README====================
# Polyvore‑1000 Dataset
Bienvenue ! Je suis **Waly NGOM**, docteur en mathématiques et passionné par l’intelligence artificielle. Ce dépôt contient **Polyvore‑1000**, un dataset conçu pour la recommandation personnalisée dans le domaine de la mode.
Polyvore‑1000 s’appuie sur les **splits Polyvore‑U** conçus par Han et al. (2017) et bénéficie du travail complémentaire de Lu et al. (CVPR 2019), qui ont apporté une approche innovante basée sur des codes binaires pour la recommandation efficace d’outfits.
## Structure des données
- **Splits disponibles** : `train`, `valid`, `test` (mêmes proportions que Polyvore‑U : 17 316 / 1 497 / 3 076 outfits).
- **Configurations** :
- `items` : données détaillées des items
- `kits` : informations sur chaque outfit
- `users` : identifiants synthétiques d’utilisateurs
- `interactions` : interactions entre utilisateurs et items (composition d’outfits, vues, likes)
### Images
Les images sont organisées dans `images/<kit_id>/` :
- `0.jpg` → image de l’outfit (kit)
- `1.jpg`, `2.jpg`, … → images correspondant aux items du kit, dans l’ordre des données JSON
### Authentification Hugging Face
Dans un notebook ou script Python :
```python
from huggingface_hub import login
import os
login(token=os.getenv("HF_TOKEN"))
## Utilisation
Pour charger ces 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")
Références
1. Han, X., et al. (2017). Learning Fashion Compatibility with Bidirectional LSTMs. ACM Multimedia.
2. Lu, Z., et al. (2019). Learning Binary Code for Personalized Fashion Recommendation. CVPR.