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Latent Predictor Networks for Code Generation

2016-03-22ACL 2016Code Available1· sign in to hype

Wang Ling, Edward Grefenstette, Karl Moritz Hermann, Tomáš Kočiský, Andrew Senior, Fumin Wang, Phil Blunsom

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Abstract

Many language generation tasks require the production of text conditioned on both structured and unstructured inputs. We present a novel neural network architecture which generates an output sequence conditioned on an arbitrary number of input functions. Crucially, our approach allows both the choice of conditioning context and the granularity of generation, for example characters or tokens, to be marginalised, thus permitting scalable and effective training. Using this framework, we address the problem of generating programming code from a mixed natural language and structured specification. We create two new data sets for this paradigm derived from the collectible trading card games Magic the Gathering and Hearthstone. On these, and a third preexisting corpus, we demonstrate that marginalising multiple predictors allows our model to outperform strong benchmarks.

Tasks

Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
Djangolpn (Ling et al., 2016)Accuracy62.3Unverified
DjangoPhrasal Statistical MT (Ling et al., 2016)Accuracy31.5Unverified

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