Zero-shot faithful factual error correction
Faithfully correcting factual errors is critical for maintaining the integrity of textual knowledge
bases and preventing hallucinations in sequence-to-sequence models. Drawing on humans' …
bases and preventing hallucinations in sequence-to-sequence models. Drawing on humans' …
Defining a new NLP playground
The recent explosion of performance of large language models (LLMs) has changed the
field of Natural Language Processing (NLP) more abruptly and seismically than any other …
field of Natural Language Processing (NLP) more abruptly and seismically than any other …
Amrfact: Enhancing summarization factuality evaluation with amr-driven training data generation
Ensuring factual consistency is crucial in various natural language processing tasks,
particularly in abstractive summarization, where preserving the integrity of information is …
particularly in abstractive summarization, where preserving the integrity of information is …
AMRFact: Enhancing Summarization Factuality Evaluation with AMR-Driven Negative Samples Generation
Ensuring factual consistency is crucial for natural language generation tasks, particularly in
abstractive summarization, where preserving the integrity of information is paramount. Prior …
abstractive summarization, where preserving the integrity of information is paramount. Prior …
Can LMs Generalize to Future Data? An Empirical Analysis on Text Summarization
Recent pre-trained language models (PLMs) achieve promising results in existing
abstractive summarization datasets. However, existing summarization benchmarks overlap …
abstractive summarization datasets. However, existing summarization benchmarks overlap …
Identifying Factual Inconsistencies in Summaries: Grounding LLM Inference via Task Taxonomy
Factual inconsistencies pose a significant hurdle for the faithful summarization by generative
models. While a major direction to enhance inconsistency detection is to derive stronger …
models. While a major direction to enhance inconsistency detection is to derive stronger …
Improving consistency for text summarization with energy functions
Current abstractive summarization models often generate inconsistent content, ie texts that
are not directly inferable from the source document, are not consistent with respect to world …
are not directly inferable from the source document, are not consistent with respect to world …
SummaCoz: A Dataset for Improving the Interpretability of Factual Consistency Detection for Summarization
G Luo, W Fan, M Li, G Sun, R Zhang… - Findings of the …, 2024 - aclanthology.org
Summarization is an important application of Large Language Models (LLMs). When
judging the quality of a summary, factual consistency holds a significant weight. Despite …
judging the quality of a summary, factual consistency holds a significant weight. Despite …
On the Intractability to Synthesize Factual Inconsistencies in Summarization
Factual consistency detection has gotten raised attention in the task of abstractive
summarization. Many existing works rely on synthetic training data, which may not …
summarization. Many existing works rely on synthetic training data, which may not …
Consistent and efficient long document understanding
Q Zeng - 2023 - ideals.illinois.edu
In the age of information overload, people's information needs from long documents are
rapidly emerging, while people's patience for careful reading and reasoning is gradually …
rapidly emerging, while people's patience for careful reading and reasoning is gradually …