Jie Cao
2019
Rhetorically Controlled Encoder-Decoder for Modern Chinese Poetry GenerationModern Chinese Poetry Generation
Zhiqiang Liu
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Zuohui Fu
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Jie Cao
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Gerard de Melo
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Yik-Cheung Tam
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Cheng Niu
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Jie Zhou
Proceedings of the 57th Annual Meeting of the Association for Computational Linguistics
Rhetoric is a vital element in modern poetry, and plays an essential role in improving its aesthetics. However, to date, it has not been considered in research on automatic poetry generation. In this paper, we propose a rhetorically controlled encoder-decoder for modern Chinese poetry generation. Our model relies on a continuous latent variable as a rhetoric controller to capture various rhetorical patterns in an encoder, and then incorporates rhetoric-based mixtures while generating modern Chinese poetry. For metaphor and personification, an automated evaluation shows that our model outperforms state-of-the-art baselines by a substantial margin, while human evaluation shows that our model generates better poems than baseline methods in terms of fluency, coherence, meaningfulness, and rhetorical aesthetics.
Observing Dialogue in Therapy : Categorizing and Forecasting Behavioral Codes
Jie Cao
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Michael Tanana
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Zac Imel
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Eric Poitras
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David Atkins
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Vivek Srikumar
Proceedings of the 57th Annual Meeting of the Association for Computational Linguistics
Automatically analyzing dialogue can help understand and guide behavior in domains such as counseling, where interactions are largely mediated by conversation. In this paper, we study modeling behavioral codes used to asses a psychotherapy treatment style called Motivational Interviewing (MI), which is effective for addressing substance abuse and related problems. Specifically, we address the problem of providing real-time guidance to therapists with a dialogue observer that (1) categorizes therapist and client MI behavioral codes and, (2) forecasts codes for upcoming utterances to help guide the conversation and potentially alert the therapist. For both tasks, we define neural network models that build upon recent successes in dialogue modeling. Our experiments demonstrate that our models can outperform several baselines for both tasks. We also report the results of a careful analysis that reveals the impact of the various network design tradeoffs for modeling therapy dialogue.
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Co-authors
- Zhiqiang Liu 1
- Zuohui Fu 1
- Gerard de Melo 1
- Yik-Cheung Tam 1
- Cheng Niu 1
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Venues
- ACL2