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Awesome-LLM-Robustness: a curated list of Uncertainty, Reliability and Robustness in Large Language Models
List of papers on hallucination detection in LLMs.
A curated list of awesome datasets with human label variation (un-aggregated labels) in Natural Language Processing and Computer Vision, accompanying The 'Problem' of Human Label Variation: On Grou…
Resources for conservation, development, and documentation of low resource (human) languages.
DSTC11 Track 5 - Task-oriented Conversational Modeling with Subjective Knowledge
Some papers and datasets about Data-To-Text Generation
Resources for paper "DialSummEval: Revisiting summarization evaluation for dialogues"
The purpose of this repository is to introduce new dialogue-level commonsense inference datasets and tasks. We chose dialogues as the data source because dialogues are known to be complex and rich …
KG-BART: Knowledge Graph-Augmented BART for GenerativeCommonsense Reasoning
This repository maintains the QAConv dataset, a question-answering dataset on informative conversations including business emails, panel discussions, and work channels.
A systematic comparison between pipeline and end-to-end architectures in the RDF-to-text task
A collection of some materials of knowledge graph question answering
Insightful Tutorials and Papers about Knowledge Graphs
A collection of research on knowledge graphs
📖 Paper reading list in conversational AI (constantly updating 🤗).
Author: Wenhao Yu ([email protected]). ACM Computing Survey'22. Reading list for knowledge-enhanced text generation, with a survey.
Language Understanding Augmentation Toolkit for Robustness Testing
A curated list of resources dedicated to Natural Language Generation (NLG)
A repo for open resources & information for people to succeed in PhD in CS & career in AI / NLP
Model explainability that works seamlessly with 🤗 transformers. Explain your transformers model in just 2 lines of code.
Attempt at tracking states of the arts and recent results (bibliography) on speech recognition.