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Qibin Chen; Junyang Lin; Yichang Zhang; Ming Ding; Yukuo Cen; Hongxia Yang; Jie Tang

Abstract
In this paper, we propose a novel end-to-end framework called KBRD, which stands for Knowledge-Based Recommender Dialog System. It integrates the recommender system and the dialog generation system. The dialog system can enhance the performance of the recommendation system by introducing knowledge-grounded information about users' preferences, and the recommender system can improve that of the dialog generation system by providing recommendation-aware vocabulary bias. Experimental results demonstrate that our proposed model has significant advantages over the baselines in both the evaluation of dialog generation and recommendation. A series of analyses show that the two systems can bring mutual benefits to each other, and the introduced knowledge contributes to both their performances.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| recommendation-systems-on-redial | KBRD | Recall@1: 0.03 Recall@10: 0.163 Recall@50: 0.338 |
| text-generation-on-redial | KBRD | Distinct-3: 0.3 Distinct-4: 0.45 Perplexity: 17.9 |
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