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Title: ScaleHLS: A New Scalable High-Level Synthesis Framework on Multi-Level Intermediate Representation
Award ID(s):
2117997
NSF-PAR ID:
10419993
Author(s) / Creator(s):
; ; ; ; ; ;
Date Published:
Journal Name:
ScaleHLS: A New Scalable High-Level Synthesis Framework on Multi-Level Intermediate Representation
Page Range / eLocation ID:
741 to 755
Format(s):
Medium: X
Sponsoring Org:
National Science Foundation
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  1. Certainty and uncertainty are fundamental to science communication. Hedges have widely been used as proxies for uncertainty. However, certainty is a complex construct, with authors expressing not only the degree but the type and aspects of uncertainty in order to give the reader a certain impression of what is known. Here, we introduce a new study of certainty that models both the level and the aspects of certainty in scientific findings. Using a new dataset of 2167 annotated scientific findings, we demonstrate that hedges alone account for only a partial explanation of certainty. We show that both the overall certainty and individual aspects can be predicted with pre-trained language models, providing a more complete picture of the author’s intended communication. Downstream analyses on 431K scientific findings from news and scientific abstracts demonstrate that modeling sentence-level and aspect-level certainty is meaningful for areas like science communication. Both the model and datasets used in this paper are released at https://blablablab.si.umich.edu/projects/certainty/. 
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