Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Paper Metadata: 2024.acl-long.622 #3863

Merged
merged 2 commits into from
Sep 11, 2024
Merged
Changes from 1 commit
Commits
File filter

Filter by extension

Filter by extension

Conversations
Failed to load comments.
Loading
Jump to
Jump to file
Failed to load files.
Loading
Diff view
Diff view
2 changes: 1 addition & 1 deletion data/xml/2024.acl.xml
Original file line number Diff line number Diff line change
Expand Up @@ -8088,7 +8088,7 @@
<pages>11588-11607</pages>
<abstract>The Split and Rephrase (SPRP) task, which consists in splitting complex sentences into a sequence of shorter grammatical sentences, while preserving the original meaning, can facilitate the processing of complex texts for humans and machines alike. It is also a valuable testbed to evaluate natural language processing models, as it requires modelling complex grammatical aspects. In this work, we evaluate large language models on the task, showing that they can provide large improvements over the state of the art on the main metrics, although still lagging in terms of splitting compliance. Results from two human evaluations further support the conclusions drawn from automated metric results. We provide a comprehensive study that includes prompting variants, domain shift, fine-tuned pretrained language models of varying parameter size and training data volumes, contrasted with both zero-shot and few-shot approaches on instruction-tuned language models. Although the latter were markedly outperformed by fine-tuned models, they may constitute a reasonable off-the-shelf alternative. Our results provide a fine-grained analysis of the potential and limitations of large language models for SPRP, with significant improvements achievable using relatively small amounts of training data and model parameters overall, and remaining limitations for all models on the task.</abstract>
<url hash="b0e00e10">2024.acl-long.622</url>
<bibkey>ponce-martinez-etal-2024-split</bibkey>
<bibkey>ponce-etal-2024-split</bibkey>
</paper>
<paper id="623">
<title><fixed-case>C</fixed-case>hunk<fixed-case>A</fixed-case>ttention: Efficient Self-Attention with Prefix-Aware <fixed-case>KV</fixed-case> Cache and Two-Phase Partition</title>
Expand Down
Loading