The dataset viewer is not available for this dataset.
Cannot get the config names for the dataset.
Error code:   ConfigNamesError
Exception:    ImportError
Message:      To be able to use PrincipledPreTraining/DiscoEval, you need to install the following dependency: DiscoEvalConstants.
Please install it using 'pip install DiscoEvalConstants' for instance.
Traceback:    Traceback (most recent call last):
                File "/src/services/worker/src/worker/job_runners/dataset/config_names.py", line 66, in compute_config_names_response
                  config_names = get_dataset_config_names(
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/inspect.py", line 347, in get_dataset_config_names
                  dataset_module = dataset_module_factory(
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/load.py", line 1914, in dataset_module_factory
                  raise e1 from None
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/load.py", line 1880, in dataset_module_factory
                  return HubDatasetModuleFactoryWithScript(
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/load.py", line 1504, in get_module
                  local_imports = _download_additional_modules(
                File "/src/services/worker/.venv/lib/python3.9/site-packages/datasets/load.py", line 354, in _download_additional_modules
                  raise ImportError(
              ImportError: To be able to use PrincipledPreTraining/DiscoEval, you need to install the following dependency: DiscoEvalConstants.
              Please install it using 'pip install DiscoEvalConstants' for instance.

Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.

DiscoEval Benchmark Datasets

Dataset Summary

The DiscoEval is an English-language Benchmark that contains a test suite of 7 tasks to evaluate whether sentence representations include semantic information relevant to discourse processing. The benchmark datasets offer a collection of tasks designed to evaluate natural language understanding models in the context of discourse analysis and coherence.

Dataset Sources

  • Arxiv: A repository of scientific papers and research articles.
  • Wikipedia: An extensive online encyclopedia with articles on diverse topics.
  • Rocstory: A dataset consisting of fictional stories.
  • Ubuntu IRC channel: Conversational data extracted from the Ubuntu Internet Relay Chat (IRC) channel.
  • PeerRead: A dataset of scientific papers frequently used for discourse-related tasks.
  • RST Discourse Treebank: A dataset annotated with Rhetorical Structure Theory (RST) discourse relations.
  • Penn Discourse Treebank: Another dataset with annotated discourse relations, facilitating the study of discourse structure.

Supported Tasks

  1. Sentence Positioning

    • Datasets Sources: Arxiv, Wikipedia, Rocstory
    • Description: Determine the correct placement of a sentence within a given context of five sentences. To form the input when training classifiers encode the five sentences to vector representations xix_i. As input to the classfier we include x1x_1 and the contcatination of x1βˆ’xix_1 - x_i for all ii: [x1,x1βˆ’x2,x1βˆ’x3,x1βˆ’x4,x1βˆ’x5][x_1, x_1 - x_2, x_1-x_3,x_1-x_4,x_1-x_5]
  2. Binary Sentence Ordering

    • Datasets Sources: Arxiv, Wikipedia, Rocstory
    • Description: Determining whether two sentences are in the correct consecutive order, identifying the more coherent structure. To form the input when training classifiers, we concatenate the embeddings of both sentences with their element-wise difference: [x1,x2,x1βˆ’x2][x_1, x_2, x_1-x_2]
  3. Discourse Coherence

    • Datasets Sources: Ubuntu IRC channel, Wikipedia
    • Description: Determine whether a sequence of six sentences form a coherent paragraph. To form the input when training classifiers, encode all sentences to vector representations and concatenate all of them: [x1,x2,x3,x4,x5,x6][x_1, x_2, x_3, x_4, x_5, x_6]
  4. Sentence Section Prediction

    • Datasets Sources: Constructed from PeerRead
    • Description: Determine the section or category to which a sentence belongs within a scientific paper, based on the content and context. To form the input when training classifiers, simply input the sentence embedding.
  5. Discourse Relations

    • Datasets Sources: RST Discourse Treebank, Penn Discourse Treebank
    • Description: Identify and classify discourse relations between sentences or text segments, helping to reveal the structure and flow of discourse. To form the input when training classifiers, refer to the original paper for instructions

Languages

The text in all datasets is in English. The associated BCP-47 code is en.

Dataset Structure

Data Instances

All tasks are classification tasks, and they differ by the number of sentences per example and the type of label.

An example from the Sentence Positioning task would look as follows:

{
'sentence_1': 'Dan was overweight as well.',
'sentence_2': 'Dan's parents were overweight.',
'sentence_3': 'The doctors told his parents it was unhealthy.',
'sentence_4': 'His parents understood and decided to make a change.',
'sentence_5': 'They got themselves and Dan on a diet.'
'label': '1'
}

The label is '1' since the first sentence should go at position number 1 (counting from zero)

Another example from the Binary Sentence Ordering task would look as follows:

{
'sentence_1': 'When she walked in, she felt awkward.',
'sentence_2': 'Janet decided to go to her high school's party.',
'label': '0'
}

The label is '0' because this is not the correct order of the sentences. It should be sentence_2 and then sentence_1.

For more examples, you can refer the original paper.

Data Fields

In this benchmark, all data fields are string, including the labels.

Data Splits

The data is split into training, validation and test set for each of the tasks in the benchmark.

Task and Dataset Train Valid Test
Sentence Positioning: Arxiv 10000 4000 4000
Sentence Positioning: Rocstory 10000 4000 4000
Sentence Positioning: Wiki 10000 4000 4000
Binary Sentence Ordering: Arxiv 20000 8000 8000
Binary Sentence Ordering: Rocstory 20000 8000 8000
Binary Sentence Ordering: Wiki 20000 8000 8000
Discourse Coherence: Chat 5816 1834 2418
Discourse Coherence: Wiki 10000 4000 4000
Sentence Section Prediction 10000 4000 4000
Discourse Relation: Penn Discourse Tree Bank: Implicit 8693 2972 3024
Discourse Relation: Penn Discourse Tree Bank: Explicit 9383 3613 3758
Discourse Relation: RST Discourse Tree Bank 17051 2045 2308

Additional Information

Benchmark Creators

This benchmark was created by Mingda Chen, Zewei Chu and Kevin Gimpel during work done at the University of Chicago and the Toyota Technologival Institute at Chicago.

Citation Information

@inproceedings{mchen-discoeval-19,
                title = {Evaluation Benchmarks and Learning Criteria for Discourse-Aware Sentence Representations},
                author = {Mingda Chen and Zewei Chu and Kevin Gimpel},
                booktitle = {Proc. of {EMNLP}},
                year={2019}
              }

Loading Data Examples

Loading Data for Sentence Positioning Task with the Arxiv data source

from datasets import load_dataset

# Load the Sentence Positioning dataset
dataset = load_dataset(path="OfekGlick/DiscoEval", name="SParxiv")

# Access the train, validation, and test splits
train_data = dataset["train"]
validation_data = dataset["validation"]
test_data = dataset["test"]

# Example usage: Print the first few training examples
for example in train_data[:5]:
    print(example)

The other possible inputs for the name parameter are: SParxiv, SProcstory, SPwiki, SSPabs, PDTB-I, PDTB-E, BSOarxiv, BSOrocstory, BSOwiki, DCchat, DCwiki, RST

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