Papers by Justin Tang

3 papers
FinEntity: Entity-level Sentiment Classification for Financial Texts (2023.emnlp-main)

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Challenge: FinEntity annotates financial entity spans and their sentiment (positive, neutral, and negative) in financial news.
Approach: They introduce an entity-level sentiment classification dataset called FinEntity that annotates financial entity spans and their sentiment in financial news.
Outcome: The proposed dataset annotates financial entity spans and their sentiment (positive, neutral, and negative) in financial news.
Understanding Factual Errors in Summarization: Errors, Summarizers, Datasets, Error Detectors (2023.acl-long)

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Challenge: Abstractive summarization systems still include factual errors in generated summaries despite recent improvements in factuality detection .
Approach: They aggregate factuality error annotations from nine existing datasets and stratify them according to the underlying summarization model.
Outcome: The proposed method improves on the ChatGPT-based model and shows that it is not superior for all error types.
Less Likely Brainstorming: Using Language Models to Generate Alternative Hypotheses (2023.findings-acl)

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Challenge: Existing methods to reduce cognitive errors in MRI interpretations do not work for generating less likely outputs.
Approach: They propose a task that asks a model to generate outputs that humans think are relevant but less likely to happen.
Outcome: The proposed method compares with several state-of-the-art controlled text generation models via automatic and human evaluations and shows that it reduces cognitive errors in interpreting MRI findings.

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