dataset_info:
features:
- name: claim_id
dtype: int64
- name: claim
dtype: string
- name: evidence
dtype: string
- name: label
dtype:
class_label:
names:
'0': SUPPORTS
'1': REFUTES
'2': NOT_ENOUGH_INFO
- name: category
dtype: string
splits:
- name: train
num_bytes: 1467456
num_examples: 4298
- name: test
num_bytes: 526276
num_examples: 1535
- name: valid
num_bytes: 635174
num_examples: 1842
download_size: 1372892
dataset_size: 2628906
license: mit
task_categories:
- text-classification
language:
- en
tags:
- climate
pretty_name: climate_fever dataset with one-to-one claim-evidence pair
size_categories:
- 1K<n<10K
Dataset Card for "climate_fever_fixed"
Dataset Summary
This dataset was created to aid our team in developing a model to more accurately perform climate change-related fact checking. We approach this task from a perspective heavily impacted by the work of the ClimateBERT team. With that in mind, our team likewise leveraged a BERT Language model to solve this task. This dataset presents an edited version of the Climate_Fever dataset, hosted by HuggingFace. Climate_Fever is composed of climate-related documents that have been annotated with labels related to fact-checking and misinformation. However, in the climate-plus project, we decided to modify the dataset to remove redundancy and keep only the essentials of a text-entailment problem: claim as the premise and evidence as the hypothesis.
Data Fields
This dataset contains 7675 records, each of which is composed of several attributes:
claim_id
: ainteger
feature, which serves as a unique identifier for each record/row.claim
: astring
feature, containes the raw text of a given climate-related claim.evidence
: astring
feature, which provides free text evidence that relates to the previously established claim.label
: aclass label
feature representing an assigned class, where values can either be 0: "supports", 1: "refutes" and 2: "not enough info".category
: astring
feature, which provides additional detail about the particular focus of a given claim.
This dataset was then broken into train, test and validation sets to enable proper evaluation of our model. These splits contain the following amount of data:
Train
: 4300 RecordsTest
: 1540 RecordsVal
: 1840 Records
Source Data
This dataset represents an evolved version of the original Climate_Fever dataset, hosted by HuggingFace. It was adapted to meet the needs of our team, as we attempted to solve a specific climate change-related task. The original dataset adopted the FEVER methodology, discussed in more detail here. Their original dataset consists of 1,535 real-world claims regarding climate-change collected on the internet. Each claim is accompanied by five manually annotated evidence sentences retrieved from the English Wikipedia that support, refute or do not give enough information to validate the claim totalling in 7,675 claim-evidence pairs.
Methodology
This dataset was curated by our team to reduce redundancy and keep only the essentials of a text-entailment problem: claim as the premise and evidence as the hypothesis. For each given claim, there are multiple sentences of evidence. We decided to expand the one-to-many relation to one-to-one. This resulted in a modified version of the climate_fever dataset that includes only one evidence sentence per claim.
Languages
The text contained in the dataset is entirely in English, as found in the real-world financial disclosures identified by the TCFD. The associated BCP-47 code is en
, to ensure clear labeling of language usage for downstream tasks and other future applications.