Command Palette
Search for a command to run...
Siqi Bao; Bingjin Chen; Huang He; Xin Tian; Han Zhou; Fan Wang; Hua Wu; Haifeng Wang; Wenquan Wu; Yingzhan Lin

Abstract
In this work, we explore the application of PLATO-2 on various dialogue systems, including open-domain conversation, knowledge grounded dialogue, and task-oriented conversation. PLATO-2 is initially designed as an open-domain chatbot, trained via two-stage curriculum learning. In the first stage, a coarse-grained response generation model is learned to fit the simplified one-to-one mapping relationship. This model is applied to the task-oriented conversation, given that the semantic mappings tend to be deterministic in task completion. In the second stage, another fine-grained generation model and an evaluation model are further learned for diverse response generation and coherence estimation, respectively. With superior capability on capturing one-to-many mapping, such models are suitable for the open-domain conversation and knowledge grounded dialogue. For the comprehensive evaluation of PLATO-2, we have participated in multiple tasks of DSTC9, including interactive evaluation of open-domain conversation (Track3-task2), static evaluation of knowledge grounded dialogue (Track3-task1), and end-to-end task-oriented conversation (Track2-task1). PLATO-2 has obtained the 1st place in all three tasks, verifying its effectiveness as a unified framework for various dialogue systems.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| interactive-evaluation-of-dialog-on-dstc9 | PLATO-2 | Coherent: 2.8017 Consistent: 0.9390 Diversity: 2.7441 Error Recovery: 2.7518 Flexible: 2.8000 Informative: 2.7881 Inquisitive: 2.7949 Likeable: 2.7878 Overall Human Rating: 4.15 Topic Depth: 2.7678 Understanding: 2.8285 |
Build AI with AI
From idea to launch — accelerate your AI development with free AI co-coding, out-of-the-box environment and best price of GPUs.