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--- |
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license: cc-by-4.0 |
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dataset_info: |
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- config_name: minority_examples |
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features: |
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- name: premise |
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dtype: string |
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- name: hypothesis |
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dtype: string |
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- name: label |
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dtype: |
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class_label: |
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names: |
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'0': entailment |
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'1': neutral |
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'2': contradiction |
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- name: idx |
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dtype: int32 |
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splits: |
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- name: train.biased |
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num_bytes: 58497575 |
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num_examples: 309873 |
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- name: train.anti_biased |
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num_bytes: 16122071 |
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num_examples: 82829 |
|
- name: validation_matched.biased |
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num_bytes: 1443678 |
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num_examples: 7771 |
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- name: validation_matched.anti_biased |
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num_bytes: 390105 |
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num_examples: 2044 |
|
- name: validation_mismatched.biased |
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num_bytes: 1536381 |
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num_examples: 7797 |
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- name: validation_mismatched.anti_biased |
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num_bytes: 412850 |
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num_examples: 2035 |
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download_size: 92308759 |
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dataset_size: 78402660 |
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- config_name: partial_input |
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features: |
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- name: premise |
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dtype: string |
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- name: hypothesis |
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dtype: string |
|
- name: label |
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dtype: |
|
class_label: |
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names: |
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'0': entailment |
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'1': neutral |
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'2': contradiction |
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- name: idx |
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dtype: int32 |
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splits: |
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- name: train.biased |
|
num_bytes: 59529986 |
|
num_examples: 309873 |
|
- name: train.anti_biased |
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num_bytes: 15089660 |
|
num_examples: 82829 |
|
- name: validation_matched.biased |
|
num_bytes: 1445996 |
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num_examples: 7745 |
|
- name: validation_matched.anti_biased |
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num_bytes: 387787 |
|
num_examples: 2070 |
|
- name: validation_mismatched.biased |
|
num_bytes: 1529878 |
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num_examples: 7758 |
|
- name: validation_mismatched.anti_biased |
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num_bytes: 419353 |
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num_examples: 2074 |
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download_size: 92308759 |
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dataset_size: 78402660 |
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task_categories: |
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- text-classification |
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language: |
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- en |
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pretty_name: MultiNLI |
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size_categories: |
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- 100K<n<1M |
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--- |
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|
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# Dataset Card for Bias-amplified Splits for MultiNLI |
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|
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## Table of Contents |
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- [Table of Contents](#table-of-contents) |
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- [Dataset Description](#dataset-description) |
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- [Dataset Summary](#dataset-summary) |
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- [Dataset Structure](#dataset-structure) |
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- [Data Instances](#data-instances) |
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- [Data Fields](#data-fields) |
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- [Data Splits](#data-splits) |
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- [Dataset Creation](#dataset-creation) |
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- [Curation Rationale](#curation-rationale) |
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- [Annotations](#annotations) |
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- [Considerations for Using the Data](#considerations-for-using-the-data) |
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- [Social Impact of Dataset](#social-impact-of-dataset) |
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- [Discussion of Biases](#discussion-of-biases) |
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- [Additional Information](#additional-information) |
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- [Dataset Curators](#dataset-curators) |
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- [Citation Information](#citation-information) |
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|
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## Dataset Description |
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- **Repository:** [Fighting Bias with Bias repo](https://github.com/schwartz-lab-nlp/fight-bias-with-bias) |
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- **Paper:** [arXiv](https://arxiv.org/abs/2305.18917) |
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- **Point of Contact:** [Yuval Reif](mailto:[email protected]) |
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- **Original Dataset's Paper:** [MultiNLI](https://arxiv.org/abs/1704.05426) |
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|
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### Dataset Summary |
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Bias-amplified splits is a novel evaluation framework to assess model robustness, by amplifying dataset biases in the training data and challenging models to generalize beyond them. This framework is defined by a bias-amplified training set and a hard, anti-biased test set, which we automatically extract from existing datasets using model-based methods. |
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Our experiments show that the identified anti-biased examples are naturally challenging for models, and moreover, models trained on bias-amplified data exhibit dramatic performance drops on anti-biased examples, which are not mitigated by common approaches to improve generalization. |
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Here we apply our framework to **MultiNLI**, a crowd-sourced collection of 433k sentence pairs annotated with textual entailment information. |
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Our evaluation framework can be applied to any existing dataset, even those considered obsolete, to test model robustness. We hope our work will guide the development of robust models that do not rely on superficial biases and correlations. |
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#### Evaluation Results (DeBERTa-large) |
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##### For splits based on minority examples: |
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| Training Data \ Test Data | Original test | Anti-biased test | |
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|---------------------------|---------------|------------------| |
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| Original training split | 91.1 | 74.3 | |
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| Biased training split | 88.7 | 57.5 | |
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##### For splits based on partial-input model: |
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| Training Data \ Test Data | Original test | Anti-biased test | |
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|---------------------------|---------------|------------------| |
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| Original training split | 91.1 | 81.4 | |
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| Biased training split | 89.5 | 71.8 | |
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|
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#### Loading the Data |
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``` |
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from datasets import load_dataset |
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# choose which bias detection method to use for the bias-amplified splits: either "minority_examples" or "partial_input" |
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dataset = load_dataset("bias-amplified-splits/mnli", "minority_examples") |
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|
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# use the biased training split and anti-biased test split |
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train_dataset = dataset['train.biased'] |
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eval_dataset = dataset['validation_matched.anti_biased'] |
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``` |
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## Dataset Structure |
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### Data Instances |
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Data instances are taken directly from MultiNLI (GLUE version), and re-split into biased and anti-biased subsets. Here is an example of an instance from the dataset: |
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``` |
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{ |
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"idx": 0, |
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"premise": "Your contribution helped make it possible for us to provide our students with a quality education.", |
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"hypothesis": "Your contributions were of no help with our students' education.", |
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"label": 2 |
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} |
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``` |
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### Data Fields |
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- `idx`: unique identifier for the example within its original data splits (e.g., validation matched) |
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- `premise`: a piece of text |
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- `hypothesis`: a piece of text that may be true, false, or whose truth conditions may not be knowable when compared to the premise |
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- `label`: one of `0`, `1` and `2` (`entailment`, `neutral`, and `contradiction`) |
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|
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### Data Splits |
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Bias-amplified splits require a method to detect *biased* and *anti-biased* examples in datasets. We release bias-amplified splits based created with each of these two methods: |
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- **Minority examples**: A novel method we introduce that leverages representation learning and clustering for identifying anti-biased *minority examples* (Tu et al., 2020)—examples that defy common statistical patterns found in the rest of the dataset. |
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- **Partial-input baselines**: A common method for identifying biased examples containing annotation artifacts in a dataset, which examines the performance of models that are restricted to using only part of the input. Such models, if successful, are bound to rely on unintended or spurious patterns in the dataset. |
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Using each of the two methods, we split each of the original train and test splits into biased and anti-biased subsets. See the [paper](https://arxiv.org/abs/2305.18917) for more details. |
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#### Minority Examples |
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| Dataset Split | Number of Instances in Split | |
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|-------------------------------------|------------------------------| |
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| Train - biased | 309873 | |
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| Train - anti-biased | 82829 | |
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| Validation matched - biased | 7771 | |
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| Validation matched - anti-biased | 2044 | |
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| Validation mismatched - biased | 7797 | |
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| Validation mismatched - anti-biased | 2035 | |
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#### Partial-input Baselines |
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|
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| Dataset Split | Number of Instances in Split | |
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|-------------------------------------|------------------------------| |
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| Train - biased | 309873 | |
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| Train - anti-biased | 82829 | |
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| Validation matched - biased | 7745 | |
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| Validation matched - anti-biased | 2070 | |
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| Validation mismatched - biased | 7758 | |
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| Validation mismatched - anti-biased | 2074 | |
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|
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## Dataset Creation |
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|
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### Curation Rationale |
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|
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NLP models often rely on superficial cues known as *dataset biases* to achieve impressive performance, and can fail on examples where these biases do not hold. To develop more robust, unbiased models, recent work aims to filter bisased examples from training sets. We argue that in order to encourage the development of robust models, we should in fact **amplify** biases in the training sets, while adopting the challenge set approach and making test sets anti-biased. To implement our approach, we introduce a simple framework that can be applied automatically to any existing dataset to use it for testing model robustness. |
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### Annotations |
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#### Annotation process |
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|
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No new annotations are required to create bias-amplified splits. Existing data instances are split into *biased* and *anti-biased* splits based on automatic model-based methods to detect such examples. |
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## Considerations for Using the Data |
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|
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### Social Impact of Dataset |
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|
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Bias-amplified splits were created to promote the development of robust NLP models that do not rely on superficial biases and correlations, and provide more challenging evaluation of existing systems. |
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### Discussion of Biases |
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We propose to use bias-amplified splits to complement benchmarks with challenging evaluation settings that test model robustness, in addition to the dataset’s main training and test sets. As such, while existing dataset biases are *amplified* during training with bias-amplified splits, these splits are intended primarily for model evaluation, to expose the bias-exploiting behaviors of models and to identify more robsut models and effective robustness interventions. |
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## Additional Information |
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### Dataset Curators |
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Bias-amplified splits were introduced by Yuval Reif and Roy Schwartz from the [Hebrew University of Jerusalem](https://schwartz-lab-huji.github.io). |
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MultiNLI was developed by Adina Williams, Nikita Nangia and Samuel Bowman. |
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### Citation Information |
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``` |
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@misc{reif2023fighting, |
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title = "Fighting Bias with Bias: Promoting Model Robustness by Amplifying Dataset Biases", |
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author = "Yuval Reif and Roy Schwartz", |
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month = may, |
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year = "2023", |
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url = "https://arxiv.org/pdf/2305.18917", |
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} |
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``` |
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|
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Source dataset: |
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``` |
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@InProceedings{N18-1101, |
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author = "Williams, Adina |
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and Nangia, Nikita |
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and Bowman, Samuel", |
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title = "A Broad-Coverage Challenge Corpus for |
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Sentence Understanding through Inference", |
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booktitle = "Proceedings of the 2018 Conference of |
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the North American Chapter of the |
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Association for Computational Linguistics: |
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Human Language Technologies, Volume 1 (Long |
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Papers)", |
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year = "2018", |
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publisher = "Association for Computational Linguistics", |
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pages = "1112--1122", |
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location = "New Orleans, Louisiana", |
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url = "http://aclweb.org/anthology/N18-1101" |
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} |
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``` |