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Dive into the research topics where Nate Kushman is active.

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Featured researches published by Nate Kushman.


empirical methods in natural language processing | 2014

Learning to Solve Arithmetic Word Problems with Verb Categorization

Mohammad Javad Hosseini; Hannaneh Hajishirzi; Oren Etzioni; Nate Kushman

This paper presents a novel approach to learning to solve simple arithmetic word problems. Our system, ARIS, analyzes each of the sentences in the problem statement to identify the relevant variables and their values. ARIS then maps this information into an equation that represents the problem, and enables its (trivial) solution as shown in Figure 1. The paper analyzes the arithmetic-word problems “genre”, identifying seven categories of verbs used in such problems. ARIS learns to categorize verbs with 81.2% accuracy, and is able to solve 77.7% of the problems in a corpus of standard primary school test questions. We report the first learning results on this task without reliance on predefined templates and make our data publicly available. 1


empirical methods in natural language processing | 2016

Neural Generation of Regular Expressions from Natural Language with Minimal Domain Knowledge.

Nicholas Locascio; Karthik Narasimhan; Eduardo DeLeon; Nate Kushman; Regina Barzilay

This paper explores the task of translating natural language queries into regular expressions which embody their meaning. In contrast to prior work, the proposed neural model does not utilize domain-specific crafting, learning to translate directly from a parallel corpus. To fully explore the potential of neural models, we propose a methodology for collecting a large corpus of regular expression, natural language pairs. Our resulting model achieves a performance gain of 19.6% over previous state-of-the-art models.


north american chapter of the association for computational linguistics | 2016

MAWPS: A Math Word Problem Repository

Rik Koncel-Kedziorski; Subhro Roy; Aida Amini; Nate Kushman; Hannaneh Hajishirzi

Recent work across several AI subdisciplines has focused on automatically solving math word problems. In this paper we introduce MAWPS, an online repository of Math Word Problems, to provide a unified testbed to evaluate different algorithms. MAWPS allows for the automatic construction of datasets with particular characteristics, providing tools for tuning the lexical and template overlap of a dataset as well as for filtering ungrammatical problems from web-sourced corpora. The online nature of this repository facilitates easy community contribution. At present, we have amassed 3,320 problems, including the full datasets used in several prominent works.


arXiv: Learning | 2016

TerpreT: A Probabilistic Programming Language for Program Induction.

Alexander L. Gaunt; Marc Brockschmidt; Rishabh Singh; Nate Kushman; Pushmeet Kohli; Jonathan Taylor; Daniel Tarlow


international conference on learning representations | 2018

PixelDefend: Leveraging Generative Models to Understand and Defend against Adversarial Examples

Yang Song; Taesup Kim; Sebastian Nowozin; Nate Kushman


international conference on learning representations | 2017

Neural Program Lattices

Chengtao Li; Daniel Tarlow; Alexander L. Gaunt; Marc Brockschmidt; Nate Kushman


international conference on machine learning | 2017

Differentiable Programs with Neural Libraries.

Alexander L. Gaunt; Marc Brockschmidt; Nate Kushman; Daniel Tarlow


international conference on learning representations | 2017

A Deep Learning Approach for Joint Video Frame and Reward Prediction in Atari Games

Felix Leibfried; Nate Kushman; Katja Hofmann


arXiv: Learning | 2017

Lifelong Perceptual Programming By Example

Alexander L. Gaunt; Marc Brockschmidt; Nate Kushman; Daniel Tarlow


neural information processing systems | 2018

Generative Adversarial Examples

Yang Song; Rui Shu; Nate Kushman

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