Difference between revisions of "Question Answering (State of the art)"

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* Zhiguo Wang and Abraham Ittycheriah. 2015. [http://arxiv.org/abs/1507.02628 FAQ-based Question Answering via Word Alignment]. In eprint arXiv:1507.02628.
 
* Zhiguo Wang and Abraham Ittycheriah. 2015. [http://arxiv.org/abs/1507.02628 FAQ-based Question Answering via Word Alignment]. In eprint arXiv:1507.02628.
 
[[Category:State of the art]]
 
[[Category:State of the art]]
* Aliaksei Severyn and Alessandro Moschitti. 2015 [http://disi.unitn.it/~severyn/papers/sigir-2015-long.pdf Learning to Rank Short Text Pairs with Convolutional Deep Neural Networks]. In SIGIR 2015.
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* Aliaksei Severyn and Alessandro Moschitti. 2015. [http://disi.unitn.it/~severyn/papers/sigir-2015-long.pdf Learning to Rank Short Text Pairs with Convolutional Deep Neural Networks]. In SIGIR 2015.

Revision as of 10:01, 21 January 2016

Answer Sentence Selection

The task of answer sentence selection is designed for the open-domain question answering setting. Given a question and a set of candidate sentences, the task is to choose the correct sentence that contains the exact answer and can sufficiently support the answer choice.


Algorithm Reference MAP MRR
Punyakanok (2004) Wang et al. (2007) 0.419 0.494
Cui (2005) Wang et al. (2007) 0.427 0.526
Wang (2007) Wang et al. (2007) 0.603 0.685
H&S (2010) Heilman and Smith (2010) 0.609 0.692
W&M (2010) Wang and Manning (2010) 0.595 0.695
Yao (2013) Yao et al. (2013) 0.631 0.748
S&M (2013) Severyn and Moschitti (2013) 0.678 0.736
Shnarch (2013) - Backward Shnarch (2013) 0.686 0.754
Yih (2013) - LCLR Yih et al. (2013) 0.709 0.770
Yu (2014) - TRAIN-ALL bigram+count Yu et al. (2014) 0.711 0.785
S&M (2015) Severyn and Moschitti (2015) 0.746 0.808
W&I (2015) Wang and Ittycheriah (2015) 0.746 0.820


References