Datasets:
Tasks:
Text Classification
Modalities:
Text
Formats:
parquet
Languages:
English
Size:
10K - 100K
ArXiv:
License:
annotations_creators: | |
- expert-generated | |
language_creators: | |
- expert-generated | |
languages: | |
- en | |
licenses: | |
- cc-by-4.0 | |
multilinguality: | |
- monolingual | |
size_categories: | |
- 10K<n<100K | |
source_datasets: | |
- original | |
task_categories: | |
- text-classification | |
task_ids: | |
- intent-classification | |
- multi-class-classification | |
paperswithcode_id: null | |
pretty_name: BANKING77 | |
train-eval-index: | |
- config: default | |
task: text-classification | |
task_id: multi_class_classification | |
splits: | |
train_split: train | |
eval_split: test | |
col_mapping: | |
text: text | |
label: target | |
metrics: | |
- type: accuracy | |
name: Accuracy | |
- type: f1 | |
name: F1 macro | |
args: | |
average: macro | |
- type: f1 | |
name: F1 micro | |
args: | |
average: micro | |
- type: f1 | |
name: F1 weighted | |
args: | |
average: weighted | |
- type: precision | |
name: Precision macro | |
args: | |
average: macro | |
- type: precision | |
name: Precision micro | |
args: | |
average: micro | |
- type: precision | |
name: Precision weighted | |
args: | |
average: weighted | |
- type: recall | |
name: Recall macro | |
args: | |
average: macro | |
- type: recall | |
name: Recall micro | |
args: | |
average: micro | |
- type: recall | |
name: Recall weighted | |
args: | |
average: weighted | |
# Dataset Card for BANKING77 | |
## Table of Contents | |
- [Dataset Description](#dataset-description) | |
- [Dataset Summary](#dataset-summary) | |
- [Supported Tasks and Leaderboards](#supported-tasks-and-leaderboards) | |
- [Languages](#languages) | |
- [Dataset Structure](#dataset-structure) | |
- [Data Instances](#data-instances) | |
- [Data Fields](#data-fields) | |
- [Data Splits](#data-splits) | |
- [Dataset Creation](#dataset-creation) | |
- [Curation Rationale](#curation-rationale) | |
- [Source Data](#source-data) | |
- [Annotations](#annotations) | |
- [Personal and Sensitive Information](#personal-and-sensitive-information) | |
- [Considerations for Using the Data](#considerations-for-using-the-data) | |
- [Social Impact of Dataset](#social-impact-of-dataset) | |
- [Discussion of Biases](#discussion-of-biases) | |
- [Other Known Limitations](#other-known-limitations) | |
- [Additional Information](#additional-information) | |
- [Dataset Curators](#dataset-curators) | |
- [Licensing Information](#licensing-information) | |
- [Citation Information](#citation-information) | |
- [Contributions](#contributions) | |
## Dataset Description | |
- **Homepage:** [Github](https://github.com/PolyAI-LDN/task-specific-datasets) | |
- **Repository:** [Github](https://github.com/PolyAI-LDN/task-specific-datasets) | |
- **Paper:** [ArXiv](https://arxiv.org/abs/2003.04807) | |
- **Leaderboard:** | |
- **Point of Contact:** | |
### Dataset Summary | |
Dataset composed of online banking queries annotated with their corresponding intents. | |
BANKING77 dataset provides a very fine-grained set of intents in a banking domain. | |
It comprises 13,083 customer service queries labeled with 77 intents. | |
It focuses on fine-grained single-domain intent detection. | |
### Supported Tasks and Leaderboards | |
Intent classification, intent detection | |
### Languages | |
English | |
## Dataset Structure | |
### Data Instances | |
An example of 'train' looks as follows: | |
``` | |
{ | |
'label': 11, # integer label corresponding to "card_arrival" intent | |
'text': 'I am still waiting on my card?' | |
} | |
``` | |
### Data Fields | |
- `text`: a string feature. | |
- `label`: One of classification labels (0-76) corresponding to unique intents. | |
Intent names are mapped to `label` in the following way: | |
| label | intent (category) | | |
|---:|:-------------------------------------------------| | |
| 0 | activate_my_card | | |
| 1 | age_limit | | |
| 2 | apple_pay_or_google_pay | | |
| 3 | atm_support | | |
| 4 | automatic_top_up | | |
| 5 | balance_not_updated_after_bank_transfer | | |
| 6 | balance_not_updated_after_cheque_or_cash_deposit | | |
| 7 | beneficiary_not_allowed | | |
| 8 | cancel_transfer | | |
| 9 | card_about_to_expire | | |
| 10 | card_acceptance | | |
| 11 | card_arrival | | |
| 12 | card_delivery_estimate | | |
| 13 | card_linking | | |
| 14 | card_not_working | | |
| 15 | card_payment_fee_charged | | |
| 16 | card_payment_not_recognised | | |
| 17 | card_payment_wrong_exchange_rate | | |
| 18 | card_swallowed | | |
| 19 | cash_withdrawal_charge | | |
| 20 | cash_withdrawal_not_recognised | | |
| 21 | change_pin | | |
| 22 | compromised_card | | |
| 23 | contactless_not_working | | |
| 24 | country_support | | |
| 25 | declined_card_payment | | |
| 26 | declined_cash_withdrawal | | |
| 27 | declined_transfer | | |
| 28 | direct_debit_payment_not_recognised | | |
| 29 | disposable_card_limits | | |
| 30 | edit_personal_details | | |
| 31 | exchange_charge | | |
| 32 | exchange_rate | | |
| 33 | exchange_via_app | | |
| 34 | extra_charge_on_statement | | |
| 35 | failed_transfer | | |
| 36 | fiat_currency_support | | |
| 37 | get_disposable_virtual_card | | |
| 38 | get_physical_card | | |
| 39 | getting_spare_card | | |
| 40 | getting_virtual_card | | |
| 41 | lost_or_stolen_card | | |
| 42 | lost_or_stolen_phone | | |
| 43 | order_physical_card | | |
| 44 | passcode_forgotten | | |
| 45 | pending_card_payment | | |
| 46 | pending_cash_withdrawal | | |
| 47 | pending_top_up | | |
| 48 | pending_transfer | | |
| 49 | pin_blocked | | |
| 50 | receiving_money | | |
| 51 | Refund_not_showing_up | | |
| 52 | request_refund | | |
| 53 | reverted_card_payment? | | |
| 54 | supported_cards_and_currencies | | |
| 55 | terminate_account | | |
| 56 | top_up_by_bank_transfer_charge | | |
| 57 | top_up_by_card_charge | | |
| 58 | top_up_by_cash_or_cheque | | |
| 59 | top_up_failed | | |
| 60 | top_up_limits | | |
| 61 | top_up_reverted | | |
| 62 | topping_up_by_card | | |
| 63 | transaction_charged_twice | | |
| 64 | transfer_fee_charged | | |
| 65 | transfer_into_account | | |
| 66 | transfer_not_received_by_recipient | | |
| 67 | transfer_timing | | |
| 68 | unable_to_verify_identity | | |
| 69 | verify_my_identity | | |
| 70 | verify_source_of_funds | | |
| 71 | verify_top_up | | |
| 72 | virtual_card_not_working | | |
| 73 | visa_or_mastercard | | |
| 74 | why_verify_identity | | |
| 75 | wrong_amount_of_cash_received | | |
| 76 | wrong_exchange_rate_for_cash_withdrawal | | |
### Data Splits | |
| Dataset statistics | Train | Test | | |
| --- | --- | --- | | |
| Number of examples | 10 003 | 3 080 | | |
| Average character length | 59.5 | 54.2 | | |
| Number of intents | 77 | 77 | | |
| Number of domains | 1 | 1 | | |
## Dataset Creation | |
### Curation Rationale | |
Previous intent detection datasets such as Web Apps, Ask Ubuntu, the Chatbot Corpus or SNIPS are limited to small number of classes (<10), which oversimplifies the intent detection task and does not emulate the true environment of commercial systems. Although there exist large scale *multi-domain* datasets ([HWU64](https://github.com/xliuhw/NLU-Evaluation-Data) and [CLINC150](https://github.com/clinc/oos-eval)), the examples per each domain may not sufficiently capture the full complexity of each domain as encountered "in the wild". This dataset tries to fill the gap and provides a very fine-grained set of intents in a *single-domain* i.e. **banking**. Its focus on fine-grained single-domain intent detection makes it complementary to the other two multi-domain datasets. | |
### Source Data | |
#### Initial Data Collection and Normalization | |
[More Information Needed] | |
#### Who are the source language producers? | |
[More Information Needed] | |
### Annotations | |
#### Annotation process | |
The dataset does not contain any additional annotations. | |
#### Who are the annotators? | |
[N/A] | |
### Personal and Sensitive Information | |
[N/A] | |
## Considerations for Using the Data | |
### Social Impact of Dataset | |
The purpose of this dataset it to help develop better intent detection systems. | |
Any comprehensive intent detection evaluation should involve both coarser-grained multi-domain datasets and a fine-grained single-domain dataset such as BANKING77. | |
### Discussion of Biases | |
[More Information Needed] | |
### Other Known Limitations | |
[More Information Needed] | |
## Additional Information | |
### Dataset Curators | |
[PolyAI](https://github.com/PolyAI-LDN) | |
### Licensing Information | |
Creative Commons Attribution 4.0 International | |
### Citation Information | |
``` | |
@inproceedings{Casanueva2020, | |
author = {I{\~{n}}igo Casanueva and Tadas Temcinas and Daniela Gerz and Matthew Henderson and Ivan Vulic}, | |
title = {Efficient Intent Detection with Dual Sentence Encoders}, | |
year = {2020}, | |
month = {mar}, | |
note = {Data available at https://github.com/PolyAI-LDN/task-specific-datasets}, | |
url = {https://arxiv.org/abs/2003.04807}, | |
booktitle = {Proceedings of the 2nd Workshop on NLP for ConvAI - ACL 2020} | |
} | |
``` | |
### Contributions | |
Thanks to [@dkajtoch](https://github.com/dkajtoch) for adding this dataset. | |