Abstract. All askers who post questions in Community-based Question Answer-ing (CQA) sites such as Yahoo! Answers, Quora or Baidu’s Zhidao, expect to re-ceive an answer, and are frustrated when their questions remain unanswered. We propose to provide a type of “heads up ” to askers by predicting how many an-swers, if at all, they will get. Giving a preemptive warning to the asker at posting time should reduce the frustration effect and hopefully allow askers to rephrase their questions if needed. To the best of our knowledge, this is the first attempt to predict the actual number of answers, in addition to predicting whether the question will be answered or not. To this effect, we introduce a new prediction model, specifically tailored to h...
There has been a massive rise in the use of Community Question and Answering (CQA) forums to get sol...
This paper addresses the problem of determining the best answer in Community-based Question Answerin...
We study how to improve the question answering (QA) model from human feedback. We formulate a contex...
This paper focuses on analyzing and predicting not-answered questions in Community based Question An...
Question answering communities such as Naver and Yahoo! An-swers have emerged as popular, and often ...
The value of Question Answering (Q&A) communities is dependent on members of the community finding t...
The value of Question Answering (Q&A) communities is de- pendent on members of the community finding...
Some questions posted in community question answering sites (CQAs) fail to attract a single answer. ...
With the blooming of online social media applications, Community Question Answering (CQA) services h...
Value of online Question Answering (Q&A) communities is driven by the question-answering behaviour o...
With the blooming of online social media applications, Community Question Answering (CQA) services h...
Question answering communities such as Yahoo! Answers have emerged as a popular alternative to gener...
Community-based question-answering (CQA) services contribute to solving many difficult questions we ...
Question answering communities (QAC) are nowadays becoming widely used due to the huge facilities an...
Community question answering (CQA) sites use a collaborative paradigm to satisfy complex information...
There has been a massive rise in the use of Community Question and Answering (CQA) forums to get sol...
This paper addresses the problem of determining the best answer in Community-based Question Answerin...
We study how to improve the question answering (QA) model from human feedback. We formulate a contex...
This paper focuses on analyzing and predicting not-answered questions in Community based Question An...
Question answering communities such as Naver and Yahoo! An-swers have emerged as popular, and often ...
The value of Question Answering (Q&A) communities is dependent on members of the community finding t...
The value of Question Answering (Q&A) communities is de- pendent on members of the community finding...
Some questions posted in community question answering sites (CQAs) fail to attract a single answer. ...
With the blooming of online social media applications, Community Question Answering (CQA) services h...
Value of online Question Answering (Q&A) communities is driven by the question-answering behaviour o...
With the blooming of online social media applications, Community Question Answering (CQA) services h...
Question answering communities such as Yahoo! Answers have emerged as a popular alternative to gener...
Community-based question-answering (CQA) services contribute to solving many difficult questions we ...
Question answering communities (QAC) are nowadays becoming widely used due to the huge facilities an...
Community question answering (CQA) sites use a collaborative paradigm to satisfy complex information...
There has been a massive rise in the use of Community Question and Answering (CQA) forums to get sol...
This paper addresses the problem of determining the best answer in Community-based Question Answerin...
We study how to improve the question answering (QA) model from human feedback. We formulate a contex...