CLAIHCSep 8, 2019

Conditional Text Generation for Harmonious Human-Machine Interaction

arXiv:1909.03409v211 citations
AI Analysis

This is an incremental review paper that synthesizes existing research trends in CTG for researchers and practitioners in natural language processing.

The paper provides a comprehensive review of Conditional Text Generation (CTG), summarizing key techniques, technical evolution, and proposing general learning models, while discussing open issues and future directions.

In recent years, with the development of deep learning, text generation technology has undergone great changes and provided many kinds of services for human beings, such as restaurant reservation and daily communication. The automatically generated text is becoming more and more fluent so researchers begin to consider more anthropomorphic text generation technology, that is the conditional text generation, including emotional text generation, personalized text generation, and so on. Conditional Text Generation (CTG) has thus become a research hotspot. As a promising research field, we find that many efforts have been paid to exploring it. Therefore, we aim to give a comprehensive review of the new research trends of CTG. We first summary several key techniques and illustrate the technical evolution route in the field of neural text generation, based on the concept model of CTG. We further make an investigation of existing CTG fields and propose several general learning models for CTG. Finally, we discuss the open issues and promising research directions of CTG.

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