acl-anthology icon indicating copy to clipboard operation
acl-anthology copied to clipboard

Paper Metadata: 2023.eacl-srw.7

Open ljcleo opened this issue 2 years ago • 2 comments

Confirm that this is a metadata correction

  • [X] I want to file corrections to make the metadata match the PDF file hosted on the ACL Anthology.

Anthology ID

2023.eacl-srw.7

Type of Paper Metadata Correction

  • [ ] Paper Title
  • [X] Paper Abstract
  • [ ] Author Name(s)

Correction to Paper Title

No response

Correction to Paper Abstract

the diverse requests from users, but also in the ability to develop an emotional connection with users. To further develop and promote social chatbots, we need to concentrate on increasing user interaction and take into account both the intellectual and emotional quotient in the conversational agents. In this paper, we propose a multi-task framework that jointly identifies the emotion of a given dialogue and generates response in accordance to the identified emotion. We employ a {BERT} based network for creating an empathetic system and use a mixed objective function that trains the end-to-end network with both the classification and generation loss. Experimental results show that our proposed framework outperforms current state-of-the-art models.

Correction to Author Name(s)

No response

ljcleo avatar May 26 '23 08:05 ljcleo

@ljcleo Please post the full version of the correct abstract.

anthology-assist avatar May 27 '23 22:05 anthology-assist

Social chatbots have gained immense popularity, and their appeal lies not just in their capacity to respond to the diverse requests from users, but also in the ability to develop an emotional connection with users. To further develop and promote social chatbots, we need to concentrate on increasing user interaction and take into account both the intellectual and emotional quotient in the conversational agents. In this paper, we propose a multi-task framework that jointly identifies the emotion of a given dialogue and generates response in accordance to the identified emotion. We employ a {BERT} based network for creating an empathetic system and use a mixed objective function that trains the end-to-end network with both the classification and generation loss. Experimental results show that our proposed framework outperforms current state-of-the-art models.

ljcleo avatar May 30 '23 06:05 ljcleo