Adversarial Text Generation via Feature-Mover's Distance (1809.06297v2)
Abstract: Generative adversarial networks (GANs) have achieved significant success in generating real-valued data. However, the discrete nature of text hinders the application of GAN to text-generation tasks. Instead of using the standard GAN objective, we propose to improve text-generation GAN via a novel approach inspired by optimal transport. Specifically, we consider matching the latent feature distributions of real and synthetic sentences using a novel metric, termed the feature-mover's distance (FMD). This formulation leads to a highly discriminative critic and easy-to-optimize objective, overcoming the mode-collapsing and brittle-training problems in existing methods. Extensive experiments are conducted on a variety of tasks to evaluate the proposed model empirically, including unconditional text generation, style transfer from non-parallel text, and unsupervised cipher cracking. The proposed model yields superior performance, demonstrating wide applicability and effectiveness.
- Liqun Chen (42 papers)
- Shuyang Dai (15 papers)
- Chenyang Tao (29 papers)
- Dinghan Shen (34 papers)
- Zhe Gan (135 papers)
- Haichao Zhang (40 papers)
- Yizhe Zhang (127 papers)
- Lawrence Carin (203 papers)