Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Measuring Compositional Generalization: A Comprehensive Method on Realistic Data

About

State-of-the-art machine learning methods exhibit limited compositional generalization. At the same time, there is a lack of realistic benchmarks that comprehensively measure this ability, which makes it challenging to find and evaluate improvements. We introduce a novel method to systematically construct such benchmarks by maximizing compound divergence while guaranteeing a small atom divergence between train and test sets, and we quantitatively compare this method to other approaches for creating compositional generalization benchmarks. We present a large and realistic natural language question answering dataset that is constructed according to this method, and we use it to analyze the compositional generalization ability of three machine learning architectures. We find that they fail to generalize compositionally and that there is a surprisingly strong negative correlation between compound divergence and accuracy. We also demonstrate how our method can be used to create new compositionality benchmarks on top of the existing SCAN dataset, which confirms these findings.

Daniel Keysers, Nathanael Sch\"arli, Nathan Scales, Hylke Buisman, Daniel Furrer, Sergii Kashubin, Nikola Momchev, Danila Sinopalnikov, Lukasz Stafiniak, Tibor Tihon, Dmitry Tsarkov, Xiao Wang, Marc van Zee, Olivier Bousquet• 2019

Related benchmarks

TaskDatasetResultRank
Semantic ParsingCFQ MCD3
Accuracy21.6
33
Semantic ParsingCFQ (MCD1)
Accuracy53
33
Semantic ParsingCFQ (MCD2)
Accuracy19.5
33
Semantic ParsingCFQ MCD avg
Exact Match Accuracy20.8
22
Semantic ParsingCFQ MCD3 (test)
Accuracy10.8
15
Semantic ParsingCFQ MCD1 (test)
Accuracy28.9
15
Semantic ParsingCFQ MCD2 (test)
Accuracy0.05
15
Showing 7 of 7 rows

Other info

Code

Follow for update