Context is Enough: Empirical Validation of $\textit{Sequentiality}$ on Essays
PositiveArtificial Intelligence
The recent paper titled 'Context is Enough: Empirical Validation of Sequentiality on Essays' presents a significant advancement in the evaluation of narrative flow in writing. By focusing on a contextual measure of sequentiality, the research addresses critiques of previous methods that relied heavily on topic selection. Using human-annotated datasets, ASAP++ and ELLIPSE, the study demonstrates that this contextual approach aligns more closely with human assessments of essential discourse traits such as Organization and Cohesion. While zero-shot prompted LLMs show higher accuracy in predicting trait scores, the contextual measure, when combined with standard linguistic features, provides greater predictive value than both the original sequentiality formulations and topic-only metrics. This combination not only enhances the accuracy of predictions but also surpasses the performance of zero-shot LLMs, underscoring the importance of context in evaluating narrative quality.
— via World Pulse Now AI Editorial System
