Justine Zhang


2020

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Balancing Objectives in Counseling Conversations: Advancing Forwards or Looking Backwards
Justine Zhang | Cristian Danescu-Niculescu-Mizil
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics

Throughout a conversation, participants make choices that can orient the flow of the interaction. Such choices are particularly salient in the consequential domain of crisis counseling, where a difficulty for counselors is balancing between two key objectives: advancing the conversation towards a resolution, and empathetically addressing the crisis situation. In this work, we develop an unsupervised methodology to quantify how counselors manage this balance. Our main intuition is that if an utterance can only receive a narrow range of appropriate replies, then its likely aim is to advance the conversation forwards, towards a target within that range. Likewise, an utterance that can only appropriately follow a narrow range of possible utterances is likely aimed backwards at addressing a specific situation within that range. By applying this intuition, we can map each utterance to a continuous orientation axis that captures the degree to which it is intended to direct the flow of the conversation forwards or backwards. This unsupervised method allows us to characterize counselor behaviors in a large dataset of crisis counseling conversations, where we show that known counseling strategies intuitively align with this axis. We also illustrate how our measure can be indicative of a conversation’s progress, as well as its effectiveness.

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ConvoKit: A Toolkit for the Analysis of Conversations
Jonathan P. Chang | Caleb Chiam | Liye Fu | Andrew Wang | Justine Zhang | Cristian Danescu-Niculescu-Mizil
Proceedings of the 21th Annual Meeting of the Special Interest Group on Discourse and Dialogue

This paper describes the design and functionality of ConvoKit, an open-source toolkit for analyzing conversations and the social interactions embedded within. ConvoKit provides an unified framework for representing and manipulating conversational data, as well as a large and diverse collection of conversational datasets. By providing an intuitive interface for exploring and interacting with conversational data, this toolkit lowers the technical barriers for the broad adoption of computational methods for conversational analysis.