|
--- |
|
dataset_info: |
|
- config_name: products |
|
features: |
|
- name: product_id |
|
dtype: string |
|
- name: product_title |
|
dtype: string |
|
- name: product_description |
|
dtype: string |
|
- name: product_bullet_point |
|
dtype: string |
|
- name: product_brand |
|
dtype: string |
|
- name: product_color |
|
dtype: string |
|
- name: product_locale |
|
dtype: string |
|
- name: split |
|
dtype: string |
|
- name: __index_level_0__ |
|
dtype: int64 |
|
splits: |
|
- name: train |
|
num_bytes: 1650407845 |
|
num_examples: 1371823 |
|
- name: test |
|
num_bytes: 537176847 |
|
num_examples: 443101 |
|
download_size: 1149707182 |
|
dataset_size: 2187584692 |
|
- config_name: queries |
|
features: |
|
- name: example_id |
|
dtype: int64 |
|
- name: query |
|
dtype: string |
|
- name: query_id |
|
dtype: int64 |
|
- name: product_id |
|
dtype: string |
|
- name: product_locale |
|
dtype: string |
|
- name: esci_label |
|
dtype: string |
|
- name: small_version |
|
dtype: int64 |
|
- name: large_version |
|
dtype: int64 |
|
- name: split |
|
dtype: string |
|
- name: __index_level_0__ |
|
dtype: int64 |
|
splits: |
|
- name: train |
|
num_bytes: 198670365 |
|
num_examples: 1983272 |
|
- name: test |
|
num_bytes: 63544917 |
|
num_examples: 638016 |
|
download_size: 63596052 |
|
dataset_size: 262215282 |
|
- config_name: sources |
|
features: |
|
- name: query_id |
|
dtype: int64 |
|
- name: source |
|
dtype: string |
|
- name: split |
|
dtype: string |
|
- name: __index_level_0__ |
|
dtype: int64 |
|
splits: |
|
- name: train |
|
num_bytes: 3458419 |
|
num_examples: 99683 |
|
- name: test |
|
num_bytes: 1048200 |
|
num_examples: 30969 |
|
download_size: 1510331 |
|
dataset_size: 4506619 |
|
configs: |
|
- config_name: products |
|
data_files: |
|
- split: train |
|
path: products/train-* |
|
- split: test |
|
path: products/test-* |
|
- config_name: queries |
|
data_files: |
|
- split: train |
|
path: queries/train-* |
|
- split: test |
|
path: queries/test-* |
|
- config_name: sources |
|
data_files: |
|
- split: train |
|
path: sources/train-* |
|
- split: test |
|
path: sources/test-* |
|
license: apache-2.0 |
|
task_categories: |
|
- text-classification |
|
- token-classification |
|
- text-generation |
|
- text2text-generation |
|
- sentence-similarity |
|
language: |
|
- en |
|
- ja |
|
- es |
|
tags: |
|
- amazon |
|
- retrieval |
|
- search |
|
- ecommerce |
|
- ranking |
|
- reranking |
|
size_categories: |
|
- 1M<n<10M |
|
--- |
|
|
|
# Amazon Shopping Queries Dataset |
|
|
|
A comprehensive dataset for improving product search, ranking and recommendations, featuring query-product pairs with detailed relevance labels. |
|
|
|
## Overview |
|
The dataset contains search queries paired with up to 40 potentially relevant products, each labeled using the ESCI system: |
|
- **E**xact match: Products that perfectly match the customer's search intent (e.g., searching "iPhone 13" and finding "Apple iPhone 13 128GB") |
|
- **S**ubstitute product: Alternative products that could satisfy the same need (e.g., searching "iPhone 13" and finding "iPhone 14" or "Samsung Galaxy S23") |
|
- **C**omplement product: Products commonly bought together with the searched item (e.g., searching "iPhone 13" and finding "iPhone 13 case" or "screen protector") |
|
- **I**rrelevant result: Products that don't match the customer's search intent (e.g., searching "iPhone 13" and finding "laptop charger") |
|
|
|
## Dataset Statistics |
|
### Reduced Version (Task 1) |
|
- 48,300 unique queries |
|
- 1,118,011 query-product pairs |
|
- **Focus**: Filtered to exclude "easy" queries, making it more challenging |
|
- Language distribution: |
|
- English (US): 29,844 queries |
|
- Spanish (ES): 8,049 queries |
|
- Japanese (JP): 10,407 queries |
|
|
|
### Full Version (Tasks 2 & 3) |
|
- 130,652 unique queries |
|
- 2,621,738 query-product pairs |
|
- **Focus**: Includes both easy and challenging queries |
|
- Language distribution: |
|
- English (US): 97,345 queries |
|
- Spanish (ES): 15,180 queries |
|
- Japanese (JP): 18,127 queries |
|
|
|
## Features |
|
- Rich product metadata including: |
|
- Product title |
|
- Product description |
|
- Product bullet points |
|
- Brand information |
|
- Color information |
|
- Multilingual support (English, Japanese, Spanish) |
|
- Train/test splits for each task |
|
|
|
## Download |
|
Install `datasets` library: |
|
```bash |
|
pip install datasets |
|
``` |
|
Donwload files: |
|
```python |
|
from datasets import load_dataset |
|
|
|
queries = load_dataset(path="Studeni/amazon-esci-data", name="queries", split=["train", "test"]) |
|
products = load_dataset(path="Studeni/amazon-esci-data", name="products", split=["train", "test"]) |
|
sources = load_dataset(path="Studeni/amazon-esci-data", name="sources", split=["train", "test"]) |
|
``` |
|
|
|
## Use Cases |
|
1. **Product Ranking**: Develop algorithms to rank relevant products higher in search results |
|
2. **Relevance Classification**: Build models to classify products as Exact, Substitute, Complement, or Irrelevant |
|
3. **Substitute Detection**: Identify substitute products for improved product recommendations |
|
4. **Semantic Search**: Train embedding models (like BERT, sentence-transformers) to: |
|
- Capture semantic similarity between queries and products |
|
- Handle long-tail queries with no exact keyword matches |
|
- Understand product relationships across categories |
|
- Example: Query "comfortable running shoes for marathon" can match with "Nike Air Zoom Alphafly" even without exact keyword overlap |
|
|
|
## Citation |
|
Originally sourced from ["Shopping Queries Dataset: A Large-Scale ESCI Benchmark for Improving Product Search"](https://github.com/amazon-science/esci-data?tab=readme-ov-file), this version is optimized for machine learning applications and semantic search research. |
|
``` |
|
@article{reddy2022shopping, |
|
title={Shopping Queries Dataset: A Large-Scale {ESCI} Benchmark for Improving Product Search}, |
|
author={Chandan K. Reddy and Lluís Màrquez and Fran Valero and Nikhil Rao and Hugo Zaragoza and Sambaran Bandyopadhyay and Arnab Biswas and Anlu Xing and Karthik Subbian}, |
|
year={2022}, |
|
eprint={2206.06588}, |
|
archivePrefix={arXiv} |
|
} |
|
``` |