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A Survey on Computational Humour From Humour Generation Towards Humour Appreciation
PhD Qualifying Examination Title: "A Survey on Computational Humour From Humour Generation Towards Humour Appreciation" by Mr. Andrew CATTLE Abstract: As natural language interfaces become more prevalent, the ability for computers to both understand and create humour becomes more important. Humour is a ubiquitous part of human communication. It can be used to make one's self more likeable or to defuse a tense situation or for just pure entertainment. While modern digital virtual assistants such as Alexa, Cortana, Google Now, and Siri currently do have the ability to tell jokes, these are typically hard-coded Easter eggs which have been written and handpicked by humans. What makes humour such an exciting challenge is that it requires not only linguistic dexterity but also world/domain knowledge. Syntax, phonology, and semantics all play a role in making a joke funny. The eld of computational humour can be divided into three areas: Humour Generation, Humour Recog- nition as a classication task, and Humour Recognition as a ranking task. Early research, somewhat counter-intuitively, tended to focus on Humour Generation. Although Humour Generation is a di cult task even for humans, researchers have typically examined highly formulaic types of humour such as punning rid- dles or humorous acronyms. Until recently, research into Humour Recognition had typically framed it as a classication task; labelling documents simply as humorous or not humorous. While this eld has been fairly successful, identi- fying several features which consistently indicate humorous intent, the reality is that humour exists on a spectrum and ranges from not funny at all to very very funny. This is the motivation behind recent reframing of humour recogni- tion as a ranking task, with several works focusing on pairwise relative humour judgments between short texts such as New Yorker cartoon captions and Twit- ter hashtag wars. This reframing also paves the way for Humour Appreciation, although such systems do not yet exist. In this survey, we summarize the existing research relating to Computational Humour. First, we explore the task of Humour Generation and examine the var- ious joke contexts employed, such as punning riddles and humorous acronyms, as well as their implementations and the quality of their outputs. Second, we explore the task of Humour Recognition as a classication task and examine the strategies employed to infer humorous intent. Finally, we explore the task of Humour Recognition as a ranking task and examine the features and systems which make up the current state-of-the-art. Date: Wednesday, 26 July 2017 Time: 10:00am - 12:00noon Venue: Room 2612A Lifts 31/32 Committee Members: Dr. Xiaojuan Ma (Supervisor) Prof. Qiang Yang (Supervisor) Dr. Brian Mak (Chairperson) Dr. Yangqiu Song Prof. Bertram Shi (ECE) **** ALL are Welcome ****