Skip to content

Shopping Queries Dataset: A Large-Scale ESCI Benchmark for Improving Product Search

License

Notifications You must be signed in to change notification settings

codinggambit/esci-data

 
 

Repository files navigation

Shopping Queries Dataset: A Large-Scale ESCI Benchmark for Improving Product Search

Introduction

We introduce the “Shopping Queries Data Set”, a large dataset of difficult search queries, released with the aim of fostering research in the area of semantic matching of queries and products. For each query, the dataset provides a list of up to 40 potentially relevant results, together with ESCI relevance judgements (Exact, Substitute, Complement, Irrelevant) indicating the relevance of the product to the query. Each query-product pair is accompanied by additional information. The dataset is multilingual, as it contains queries in English, Japanese, and Spanish.

The primary objective of releasing this dataset is to create a benchmark for building new ranking strategies and simultaneously identifying interesting categories of results (i.e., substitutes) that can be used to improve the customer experience when searching for products. The three different tasks that are studied in the literature (see https://amazonkddcup.github.io/) using this Shopping Queries Dataset are:

Task 1 - Query-Product Ranking: Given a user specified query and a list of matched products, the goal of this task is to rank the products so that the relevant products are ranked above the non-relevant ones.

Task 2 - Multi-class Product Classification: Given a query and a result list of products retrieved for this query, the goal of this task is to classify each product as being an Exact, Substitute, Complement, or Irrelevant match for the query.

Task 3 - Product Substitute Identification: This task will measure the ability of the systems to identify the substitute products in the list of results for a given query.

Dataset

We provide two different versions of the data set. One for task 1 which is reduced version in terms of number of examples and ones for tasks 2 and 3 which is a larger.

The training data set contain a list of query-result pairs with annotated E/S/C/I labels. The data is multilingual and it includes queries from English, Japanese, and Spanish languages. The examples in the data set have the following fields: example_id, query, query_id, product_id, product_locale, esci_label, small_version, large_version, split, product_title, product_description, product_bullet_point, product_brand, product_color and source

The Shopping Queries Data Set is a large-scale manually annotated data set composed of challenging customer queries.

There are 2 versions of the dataset. The reduced version of the data set contains 48,300 unique queries and 1,118,011 rows corresponding each to a <query, item> judgement. The larger version of the data set contains 130,652 unique queries and 2,621,738 judgements. The reduced version of the data accounts for queries that are deemed to be “easy”, and hence filtered out. The data is stratified by queries in two splits train, and test.

A summary of our Shopping Queries Data Set is given in the two tables below showing the statistics of the reduced and larger version, respectively. These tables include the number of unique queries, the number of judgements, and the average number of judgements per query (i.e., average depth) across the three different languages.

Total Total Total Train Train Train Test Test Test
Language # Queries # Judgements Avg. Depth # Queries # Judgements Avg. Depth # Queries # Judgements Avg. Depth
English (US) 29,844 601,354 20.15 20,888 419,653 20.09 8,956 181,701 20.29
Spanish (ES) 8,049 218,774 27.18 5,632 152,891 27.15 2,417 65,883 27.26
Japanese (JP) 10,407 297,883 28.62 7,284 209,094 28.71 3,123 88,789 28.43
Overall 48,300 1,118,011 23.15 33,804 781,638 23.12 14,496 336,373 23.20

Table 1: Summary of the Shopping queries data set for task 1 (reduced version) - the number of unique queries, the number of judgements, and the average number of judgements per query.

Total Total Total Train Train Train Test Test Test
Language # Queries # Judgements Avg. Depth # Queries # Judgements Avg. Depth # Queries # Judgements Avg. Depth
English (US) 97,345 1,818,825 18.68 74,888 1,393,063 18.60 22,458 425,762 18.96
Spanish (ES) 15,180 356,410 23.48 11,336 263,063 23.21 3,844 93,347 24.28
Japanese (JP) 18,127 446,053 24.61 13,460 327,146 24.31 4,667 118,907 25.48
Overall 130,652 2,621,288 20.06 99,684 1,983,272 19.90 30,969 638,016 20.60

Table 2: Summary of the Shopping queries data set for tasks 2 and 3 (larger version) - the number of unique queries, the number of judgements, and the average number of judgements per query.

Usage

The dataset has the following files:

  • shopping_queries_dataset_examples.parquet contains the following columns : example_id, query, query_id, product_id, product_locale, esci_label, small_version, large_version, split
  • shopping_queries_dataset_products.parquet contains the following columns : product_id, product_title, product_description, product_bullet_point, product_brand, product_color, product_locale
  • shopping_queries_dataset_sources.csv contains the following columns : query_id, source

Load examples, products and sources

import pandas as pd
df_examples = pd.read_parquet('shopping_queries_dataset_examples.parquet')
df_products = pd.read_parquet('shopping_queries_dataset_products.parquet')
df_sources = pd.read_csv("shopping_queries_dataset_sources.csv")

Merge examples with products

df_examples_products = pd.merge(
    df_examples,
    df_products,
    how='left',
    left_on=['product_locale','product_id'],
    right_on=['product_locale', 'product_id']
)

Filter and prepare for Task 1

df_task_1 = df_examples_products[df_examples_products["small_version"] == 1]
df_task_1_train = df_task_1[df_task_1["split"] == "train"]
df_task_1_test = df_task_1[df_task_1["split"] == "test"]

Filter and prepare data for Task 2

df_task_2 = df_examples_products[df_examples_products["large_version"] == 1]
df_task_2_train = df_task_2[df_task_2["split"] == "train"]
df_task_2_test = df_task_2[df_task_2["split"] == "test"]

Filter and prepare data for Task 3

df_task_3 = df_examples_products[df_examples_products["large_version"] == 1]
df_task_3["subtitute_label"] = df_task_3["esci_label"].apply(lambda esci_label: 1 if esci_label == "S" else 0 )
del df_task_3["esci_label"]
df_task_3_train = df_task_3[df_task_3["split"] == "train"]
df_task_3_test = df_task_3[df_task_3["split"] == "test"]

Merge queries with sources (optional)

df_examples_products_source = pd.merge(
    df_examples_products,
    df_sources,
    how='left',
    left_on=['query_id'],
    right_on=['query_id']
)

Baselines

In order to ensure the feasibility of the proposed tasks, we will provide the results obtained by standard baseline models run on this data sets. For example, for the first task (ranking), we have run a BERT model. For the remaining two tasks (classification) we will provide the results of the multilingual BERT-based models as the initial baseline.

Requirements

We launched the baselines experiments creating an environment with Python 3.6 and installing the packages dependencies shown below:

numpy==1.19.2
pandas==1.1.5
transformers==4.16.2
scikit-learn==0.24.1
sentence-transformers==2.1.0

For installing the dependencies we can launch the following command:

pip install -r requirements.txt

Reproduce published results

For a task K, we provide the same scripts, one for training the model (and preprocessing the data for tasks 2 and 3): launch-experiments-taskK.sh; and a second script for getting the predictions for the public test set using the model trained on the previous step: launch-predictions-taskK.sh.

Task 1 - Query Product Ranking

For task 1, we fine-tuned 3 models one for each product_locale.

For us locacale we fine-tuned MS MARCO Cross-Encoders. For es and jp locales multilingual MPNet. We used the query and title of the product as input for these models.

To get the nDCG score of the ranking models is needed the terrier source code (download version 5.5 here)

cd ranking/
./launch-experiments-task1.sh
./launch-predictions-task1.sh $TERRIER_PATH

Task 2 - Multiclass Product Classification

For task 2, we trained a Multilayer perceptron (MLP) classifier whose input is the concatenation of the representations provided by BERT multilingual base for the query and title of the product.

cd classification_identification/
./launch-experiments-task2.sh
./launch-predictions-task2.sh

Task 3 - Product Substitute Identification

For task 3, we followed the same approach as in task 2.

cd classification_identification/
./launch-experiments-task3.sh
./launch-predictions-task3.sh

Results

The following table shows the baseline results obtained through the different public tests of the three tasks.

Task Metrics Scores
1 nDCG 0.83
2 Macro F1, Micro F1 0.23, 0.62
3 Macro F1, Micro F1 0.44, 0.76

Security

See CONTRIBUTING for more information.

Cite

Please cite our paper if you use this dataset for your own 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}
}

License

This project is licensed under the Apache-2.0 License.

About

Shopping Queries Dataset: A Large-Scale ESCI Benchmark for Improving Product Search

Resources

License

Code of conduct

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 76.9%
  • Shell 23.1%