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Yixuan Su; Deng Cai; Qingyu Zhou; Zibo Lin; Simon Baker; Yunbo Cao; Shuming Shi; Nigel Collier; Yan Wang

Abstract
We study the learning of a matching model for dialogue response selection. Motivated by the recent finding that models trained with random negative samples are not ideal in real-world scenarios, we propose a hierarchical curriculum learning framework that trains the matching model in an "easy-to-difficult" scheme. Our learning framework consists of two complementary curricula: (1) corpus-level curriculum (CC); and (2) instance-level curriculum (IC). In CC, the model gradually increases its ability in finding the matching clues between the dialogue context and a response candidate. As for IC, it progressively strengthens the model's ability in identifying the mismatching information between the dialogue context and a response candidate. Empirical studies on three benchmark datasets with three state-of-the-art matching models demonstrate that the proposed learning framework significantly improves the model performance across various evaluation metrics.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| conversational-response-selection-on-douban-1 | SA-BERT+HCL | MAP: 0.639 MRR: 0.681 P@1: 0.514 R10@1: 0.330 R10@2: 0.531 R10@5: 0.858 |
| conversational-response-selection-on-e | SA-BERT+HCL | R10@1: 0.721 R10@2: 0.896 R10@5: 0.993 |
| conversational-response-selection-on-rrs | SA-BERT+HCL | MAP: 0.671 MRR: 0.683 P@1: 0.503 R10@1: 0.454 R10@2: 0.659 R10@5: 0.917 |
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