Detecting Context Dependent Messages in a Conversational Environment
نویسندگان
چکیده
While automatic response generation for building chatbot systems has drawn a lot of attention recently, there is limited understanding on when we need to consider the linguistic context of an input text in the generation process. The task is challenging, as messages in a conversational environment are short and informal, and evidence that can indicate a message is context dependent is scarce. After a study of social conversation data crawled from the web, we observed that some characteristics estimated from the responses of messages are discriminative for identifying context dependent messages. With the characteristics as weak supervision, we propose using a Long Short Term Memory (LSTM) network to learn a classifier. Our method carries out text representation and classifier learning in a unified framework. Experimental results show that the proposed method can significantly outperform baseline methods on accuracy of classification.
منابع مشابه
Conversational Repairs in Persian Dramatic Discourse: Akbar Radi's Pellekân (The Steps)
The present study is an attempt to investigate conversational repair phenomenon in Persian dramatic discourse and it tries to check the presence of any predominant preference for employing a specific type of repair rather than the others in the context of Persian drama. To reach the aforementioned purpose, Schegloff, Jefferson, and Sacks’s (1977) framework has been adopted and applied to Akbar ...
متن کاملComedy, Context and Unsaid Meaning: A Case Study in Conversational Implicature
Pragmatics moves away from the word level and sentence level study of language towards the study of language in real-world context and at discourse level whereby two or more participants take part in conversation. There are moments when the speaker explicitly says something but the listener may have other interpretations and inferences from their statements. The aim of this study was to demonst...
متن کاملConversational Contextual Cues: The Case of Personalization and History for Response Ranking
We investigate the task of modeling opendomain, multi-turn, unstructured, multiparticipant, conversational dialogue. We specifically study the effect of incorporating different elements of the conversation. Unlike previous efforts, which focused on modeling messages and responses, we extend the modeling to long context and participant’s history. Our system does not rely on handwritten rules or ...
متن کاملDetecting Bot Networks Based On HTTP And TLS Traffic Analysis
Abstract— Bot networks are a serious threat to cyber security, whose destructive behavior affects network performance directly. Detecting of infected HTTP communications is a big challenge because infected HTTP connections are clearly merged with other types of HTTP traffic. Cybercriminals prefer to use the web as a communication environment to launch application layer attacks and secretly enga...
متن کاملA Novel Method for Unsupervised and Supervised Conversational Message Thread Detection
Efficiently detecting conversation threads from a pool of messages, such as social network chats, emails, comments to posts, news etc., is relevant for various applications, including Web Marketing, Information Retrieval and Digital Forensics. Existing approaches focus on text similarity using keywords as features that are strongly dependent on the dataset. Therefore, dealing with new corpora r...
متن کامل