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Using Word Associations for Humour Recognition
PhD Thesis Proposal Defence Title: "Using Word Associations for Humour Recognition" 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, to defuse a tense situation, or just for pure entertainment. As modern digital virtual assistants such as Alexa, Cortana, Google Now, and Siri become more human-like, the ability to effectively recognize, interpret, and even produce humour becomes more important. 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. However, existing humour recognition works have typically taken a fairly basic view of joke semantics, treating jokes as unordered bags-of-words and computing word embedding similarities between all word pairs. This bears little resemblance to the way humans actually interpret humour. In this proposal we motivate the use of semantic relatedness based on word associa- tions for humour recognition. Furthermore, we present evidence that word associations outperform Word2Vec similarity on both humour classification and humour ranking tasks across several datasets. Word associations’ focus on relatedness over similarity offers an increased flexibility and the ability to capture weaker, more tangential relationships between concepts. Word associations also better represent the way humans store their mental lexicons. We introduce two methods for extracting word association features. The first is a graph-based method which is efficient to calculate but suffers from coverage issues. The second is a sophisticated word association strength prediction model capable of predicting association strengths between arbitrary word pairs. In addition to documenting the creating of this prediction model we also evaluate its performance both on an association prediction task and on a humour classification task. Date: Thursday, 3 May 2018 Time: 3:00pm - 5:00pm Venue: Room 4472 (lifts 25/26) Committee Members: Dr. Xiaojuan Ma (Supervisor) Dr. Yangqiu Song (Chairperson) Prof. Fangzhen Lin Prof. Dit-Yan Yeung **** ALL are Welcome ****