Affective Decoding for Empathetic Response Generation
- URL: http://arxiv.org/abs/2108.08102v1
- Date: Wed, 18 Aug 2021 11:48:40 GMT
- Title: Affective Decoding for Empathetic Response Generation
- Authors: Chengkun Zheng, Guanyi Chen, Chenghua Lin, Ruizhe Li, Zhigang Chen
- Abstract summary: We propose a technique called Affective Decoding for empathetic response generation.
Our method can effectively incorporate emotion signals during each decoding step.
Our models are perceived to be more empathetic by human evaluations.
- Score: 8.391383696266704
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Understanding speaker's feelings and producing appropriate responses with
emotion connection is a key communicative skill for empathetic dialogue
systems. In this paper, we propose a simple technique called Affective Decoding
for empathetic response generation. Our method can effectively incorporate
emotion signals during each decoding step, and can additionally be augmented
with an auxiliary dual emotion encoder, which learns separate embeddings for
the speaker and listener given the emotion base of the dialogue. Extensive
empirical studies show that our models are perceived to be more empathetic by
human evaluations, in comparison to several strong mainstream methods for
empathetic responding.
Related papers
- CTSM: Combining Trait and State Emotions for Empathetic Response Model [2.865464162057812]
Empathetic response generation endeavors to empower dialogue systems to perceive speakers' emotions and generate empathetic responses accordingly.
We propose Combining Trait and State emotions for Empathetic Response Model (CTSM)
To sufficiently perceive emotions in dialogue, we first construct and encode trait and state emotion embeddings.
We further enhance emotional perception capability through an emotion guidance module that guides emotion representation.
arXiv Detail & Related papers (2024-03-22T10:45:13Z) - E-CORE: Emotion Correlation Enhanced Empathetic Dialogue Generation [33.57399405783864]
We propose a novel emotion correlation enhanced empathetic dialogue generation framework.
Specifically, a multi-resolution emotion graph is devised to capture context-based emotion interactions.
We then propose an emotion correlation enhanced decoder, with a novel correlation-aware aggregation and soft/hard strategy.
arXiv Detail & Related papers (2023-11-25T12:47:39Z) - Use of a Taxonomy of Empathetic Response Intents to Control and
Interpret Empathy in Neural Chatbots [4.264192013842096]
A recent trend in the domain of open-domain conversational agents is enabling them to converse empathetically to emotional prompts.
Current approaches either follow an end-to-end approach or condition the responses on similar emotion labels to generate empathetic responses.
We propose several rule-based and neural approaches to predict the next response's emotion/intent and generate responses conditioned on these predicted emotions/intents.
arXiv Detail & Related papers (2023-05-17T10:03:03Z) - Empathetic Dialogue Generation via Sensitive Emotion Recognition and
Sensible Knowledge Selection [47.60224978460442]
We propose a Serial and Emotion-Knowledge interaction (SEEK) method for empathetic dialogue generation.
We use a fine-grained encoding strategy which is more sensitive to the emotion dynamics (emotion flow) in the conversations to predict the emotion-intent characteristic of response. Besides, we design a novel framework to model the interaction between knowledge and emotion to generate more sensible response.
arXiv Detail & Related papers (2022-10-21T03:51:18Z) - Perspective-taking and Pragmatics for Generating Empathetic Responses
Focused on Emotion Causes [50.569762345799354]
We argue that two issues must be tackled at the same time: (i) identifying which word is the cause for the other's emotion from his or her utterance and (ii) reflecting those specific words in the response generation.
Taking inspiration from social cognition, we leverage a generative estimator to infer emotion cause words from utterances with no word-level label.
arXiv Detail & Related papers (2021-09-18T04:22:49Z) - Exemplars-guided Empathetic Response Generation Controlled by the
Elements of Human Communication [88.52901763928045]
We propose an approach that relies on exemplars to cue the generative model on fine stylistic properties that signal empathy to the interlocutor.
We empirically show that these approaches yield significant improvements in empathetic response quality in terms of both automated and human-evaluated metrics.
arXiv Detail & Related papers (2021-06-22T14:02:33Z) - Emotion-aware Chat Machine: Automatic Emotional Response Generation for
Human-like Emotional Interaction [55.47134146639492]
This article proposes a unifed end-to-end neural architecture, which is capable of simultaneously encoding the semantics and the emotions in a post.
Experiments on real-world data demonstrate that the proposed method outperforms the state-of-the-art methods in terms of both content coherence and emotion appropriateness.
arXiv Detail & Related papers (2021-06-06T06:26:15Z) - Target Guided Emotion Aware Chat Machine [58.8346820846765]
The consistency of a response to a given post at semantic-level and emotional-level is essential for a dialogue system to deliver human-like interactions.
This article proposes a unifed end-to-end neural architecture, which is capable of simultaneously encoding the semantics and the emotions in a post.
arXiv Detail & Related papers (2020-11-15T01:55:37Z) - Knowledge Bridging for Empathetic Dialogue Generation [52.39868458154947]
Lack of external knowledge makes empathetic dialogue systems difficult to perceive implicit emotions and learn emotional interactions from limited dialogue history.
We propose to leverage external knowledge, including commonsense knowledge and emotional lexical knowledge, to explicitly understand and express emotions in empathetic dialogue generation.
arXiv Detail & Related papers (2020-09-21T09:21:52Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.