The Role of Conversation Context for Sarcasm Detection in Online Interactions
نویسندگان
چکیده
Computational models for sarcasm detection have often relied on the content of utterances in isolation. However, speaker’s sarcastic intent is not always obvious without additional context. Focusing on social media discussions, we investigate two issues: (1) does modeling of conversation context help in sarcasm detection and (2) can we understand what part of conversation context triggered the sarcastic reply. To address the first issue, we investigate several types of Long Short-Term Memory (LSTM) networks that can model both the conversation context and the sarcastic response.1 We show that the conditional LSTM network (Rocktäschel et al., 2015) and LSTM networks with sentence level attention on context and response outperform the LSTM model that reads only the response. To address the second issue, we present a qualitative analysis of attention weights produced by the LSTM models with attention and discuss the results compared with human performance on the task.
منابع مشابه
A Large Self-Annotated Corpus for Sarcasm
We introduce the Self-Annotated Reddit Corpus (SARC), a large corpus for sarcasm research and for training and evaluating systems for sarcasm detection. The corpus has 1.3 million sarcastic statements — 10 times more than any previous dataset — and many times more instances of non-sarcastic statements, allowing for learning in both balanced and unbalanced label regimes. Each statement is furthe...
متن کاملExtracting relevant knowledge for the detection of sarcasm and nastiness in the social web
Automatic detection of emotions like sarcasm or nastiness in online written conversation is a difficult task. It requires a system that can manage some kind of knowledge to interpret that emotional language is being used. In this work, we try to provide this knowledge to the system by considering alternative sets of features obtained according to different criteria. We test a range of different...
متن کاملContextualized Sarcasm Detection on Twitter
Sarcasm requires some shared knowledge between speaker and audience; it is a profoundly contextual phenomenon. Most computational approaches to sarcasm detection, however, treat it as a purely linguistic matter, using information such as lexical cues and their corresponding sentiment as predictive features. We show that by including extra-linguistic information from the context of an utterance ...
متن کاملSarcasm Detection: Beyond Machine Learning Algorithms
Noise in online networks especially knowledge networks such as Quora, Yahoo! Q&A, reddit can be attributed to jokes, redundancy, insults, sarcasm. As the size of the content on these websites grows in a manner not possible to be monitored manually, there is a need to automatically detect the undesired text to increase the signal (useful content) to noise ratio. Popular machine learning algorith...
متن کاملTeachers’ Strategies Used to Foster Teacher-Student and Student-Student Interactions in EFL Conversation Classrooms: A Conversation Analysis Approach
Despite the fact that there are a wide range of strategies used to foster interactions in EFL conversation classrooms, many novice teachers are not aware of them. In view of this problem, the current study aimed to identify such strategies commonly used by EFL teachers in conversation classrooms. To this end, fifty sessions of college level conversation classrooms were observed andtheir teacher...
متن کامل