Yizhe Zhang


2020

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INSET: Sentence Infilling with INter-SEntential Transformer
Yichen Huang | Yizhe Zhang | Oussama Elachqar | Yu Cheng
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics

Missing sentence generation (or sentence in-filling) fosters a wide range of applications in natural language generation, such as document auto-completion and meeting note expansion. This task asks the model to generate intermediate missing sentences that can syntactically and semantically bridge the surrounding context. Solving the sentence infilling task requires techniques in natural language processing ranging from understanding to discourse-level planning to generation. In this paper, we propose a framework to decouple the challenge and address these three aspects respectively, leveraging the power of existing large-scale pre-trained models such as BERT and GPT-2. We empirically demonstrate the effectiveness of our model in learning a sentence representation for generation and further generating a missing sentence that fits the context.

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Improving Disentangled Text Representation Learning with Information-Theoretic Guidance
Pengyu Cheng | Martin Renqiang Min | Dinghan Shen | Christopher Malon | Yizhe Zhang | Yitong Li | Lawrence Carin
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics

Learning disentangled representations of natural language is essential for many NLP tasks, e.g., conditional text generation, style transfer, personalized dialogue systems, etc. Similar problems have been studied extensively for other forms of data, such as images and videos. However, the discrete nature of natural language makes the disentangling of textual representations more challenging (e.g., the manipulation over the data space cannot be easily achieved). Inspired by information theory, we propose a novel method that effectively manifests disentangled representations of text, without any supervision on semantics. A new mutual information upper bound is derived and leveraged to measure dependence between style and content. By minimizing this upper bound, the proposed method induces style and content embeddings into two independent low-dimensional spaces. Experiments on both conditional text generation and text-style transfer demonstrate the high quality of our disentangled representation in terms of content and style preservation.

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DIALOGPT : Large-Scale Generative Pre-training for Conversational Response Generation
Yizhe Zhang | Siqi Sun | Michel Galley | Yen-Chun Chen | Chris Brockett | Xiang Gao | Jianfeng Gao | Jingjing Liu | Bill Dolan
Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics: System Demonstrations

We present a large, tunable neural conversational response generation model, DIALOGPT (dialogue generative pre-trained transformer). Trained on 147M conversation-like exchanges extracted from Reddit comment chains over a period spanning from 2005 through 2017, DialoGPT extends the Hugging Face PyTorch transformer to attain a performance close to human both in terms of automatic and human evaluation in single-turn dialogue settings. We show that conversational systems that leverage DialoGPT generate more relevant, contentful and context-consistent responses than strong baseline systems. The pre-trained model and training pipeline are publicly released to facilitate research into neural response generation and the development of more intelligent open-domain dialogue systems.