no code implementations • ACL 2017 • Bishan Yang, Tom Mitchell
This paper focuses on how to take advantage of external knowledge bases (KBs) to improve recurrent neural networks for machine reading.
no code implementations • ACL 2018 • Igor Labutov, Bishan Yang, Anusha Prakash, Amos Azaria
Question Answering (QA), as a research field, has primarily focused on either knowledge bases (KBs) or free text as a source of knowledge.
no code implementations • EMNLP 2018 • Igor Labutov, Bishan Yang, Tom Mitchell
As humans, we often rely on language to learn language.
no code implementations • EMNLP 2017 • Bishan Yang, Tom Mitchell
We introduce a new method for frame-semantic parsing that significantly improves the prior state of the art.
no code implementations • ICML 2017 • David Belanger, Bishan Yang, Andrew McCallum
Structured Prediction Energy Networks (SPENs) are a simple, yet expressive family of structured prediction models (Belanger and McCallum, 2016).
1 code implementation • NAACL 2016 • Bishan Yang, Tom Mitchell
Events and entities are closely related; entities are often actors or participants in events and events without entities are uncommon.
no code implementations • TACL 2015 • Bishan Yang, Claire Cardie, Peter Frazier
We present a novel hierarchical distance-dependent Bayesian model for event coreference resolution.
10 code implementations • 20 Dec 2014 • Bishan Yang, Wen-tau Yih, Xiaodong He, Jianfeng Gao, Li Deng
We consider learning representations of entities and relations in KBs using the neural-embedding approach.
Ranked #10 on
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no code implementations • 14 Nov 2014 • Bishan Yang, Wen-tau Yih, Xiaodong He, Jianfeng Gao, Li Deng
In this paper we present a unified framework for modeling multi-relational representations, scoring, and learning, and conduct an empirical study of several recent multi-relational embedding models under the framework.
no code implementations • TACL 2014 • Bishan Yang, Claire Cardie
In this paper, we study the problems of opinion expression extraction and expression-level polarity and intensity classification.