Title
A Hybrid Chinese Conversation model based on retrieval and generation
Abstract
Conversation generation is an important natural language processing task and has attracted much attention in recent years. The realization of the conversation model is also of great significance to the field of social computing, helping to build artificial intelligence robots on social networks. The open domain conversation model is fundamentally data-driven, which can be roughly divided into retrieval models and generation models. Although remarkable progress has been achieved in recent years, it is still difficult to get responses that are grammatically and semantically appropriate. We propose the Rerank of Retrieval-based and Transformer-based Conversation model (RRT), a novel conversation model that combines the retrieval model with the generation model for the purpose of obtaining context–appropriate response. The context–response pairs with the highest similarity from training set are retrieved using traditional retrieval method, and further ranked to obtain the retrieval candidate response. We replaced the traditional sequence-to-sequence models for conversation generation by the transformer model and achieved better results with less training time. Finally, the post-reranking module is used to rank the retrieved candidate and the generated one to obtain the final response. We conducted detailed experiments on two datasets and the results show that compared with the traditional generation model, our model has a significant improvement in each metric, and the training time is decreased by a factor of 5. Furthermore, our model is more informative and relevant to the input context than the retrieval model.
Year
DOI
Venue
2021
10.1016/j.future.2020.08.030
Future Generation Computer Systems
Keywords
DocType
Volume
Conversation model,Retrieval model,Generation model,Post-reranking,Social computing
Journal
114
ISSN
Citations 
PageRank 
0167-739X
0
0.34
References 
Authors
0
5
Name
Order
Citations
PageRank
Tinghuai Ma110711.50
Huimin Yang200.34
Qing Tian300.68
Yuan Tian427021.90
Najla Al-Nabhan5196.49