Search Results for author: Jonathan Gratch

Found 14 papers, 2 papers with code

Are LLMs Effective Negotiators? Systematic Evaluation of the Multifaceted Capabilities of LLMs in Negotiation Dialogues

no code implementations21 Feb 2024 Deuksin Kwon, Emily Weiss, Tara Kulshrestha, Kushal Chawla, Gale M. Lucas, Jonathan Gratch

A successful negotiation demands a deep comprehension of the conversation context, Theory-of-Mind (ToM) skills to infer the partner's motives, as well as strategic reasoning and effective communication, making it challenging for automated systems.

Can Language Model Moderators Improve the Health of Online Discourse?

no code implementations16 Nov 2023 Hyundong Cho, Shuai Liu, Taiwei Shi, Darpan Jain, Basem Rizk, YuYang Huang, Zixun Lu, Nuan Wen, Jonathan Gratch, Emilio Ferrera, Jonathan May

Human moderation of online conversation is essential to maintaining civility and focus in a dialogue, but is challenging to scale and harmful to moderators.

Language Modelling Text Generation

Be Selfish, But Wisely: Investigating the Impact of Agent Personality in Mixed-Motive Human-Agent Interactions

no code implementations22 Oct 2023 Kushal Chawla, Ian Wu, Yu Rong, Gale M. Lucas, Jonathan Gratch

A natural way to design a negotiation dialogue system is via self-play RL: train an agent that learns to maximize its performance by interacting with a simulated user that has been designed to imitate human-human dialogue data.

Is GPT a Computational Model of Emotion? Detailed Analysis

no code implementations25 Jul 2023 Ala N. Tak, Jonathan Gratch

This paper investigates the emotional reasoning abilities of the GPT family of large language models via a component perspective.

Prompt Engineering

Social Influence Dialogue Systems: A Survey of Datasets and Models For Social Influence Tasks

no code implementations11 Oct 2022 Kushal Chawla, Weiyan Shi, Jingwen Zhang, Gale Lucas, Zhou Yu, Jonathan Gratch

Dialogue systems capable of social influence such as persuasion, negotiation, and therapy, are essential for extending the use of technology to numerous realistic scenarios.

Opponent Modeling in Negotiation Dialogues by Related Data Adaptation

1 code implementation Findings (NAACL) 2022 Kushal Chawla, Gale M. Lucas, Jonathan May, Jonathan Gratch

A practical model for this task needs to infer these priorities of the opponent on the fly based on partial dialogues as input, without needing additional annotations for training.

Understanding of Emotion Perception from Art

no code implementations13 Oct 2021 Digbalay Bose, Krishna Somandepalli, Souvik Kundu, Rimita Lahiri, Jonathan Gratch, Shrikanth Narayanan

Computational modeling of the emotions evoked by art in humans is a challenging problem because of the subjective and nuanced nature of art and affective signals.

Towards Emotion-Aware Agents For Negotiation Dialogues

no code implementations28 Jul 2021 Kushal Chawla, Rene Clever, Jaysa Ramirez, Gale Lucas, Jonathan Gratch

Negotiation is a complex social interaction that encapsulates emotional encounters in human decision-making.

Decision Making

AVEC 2016 - Depression, Mood, and Emotion Recognition Workshop and Challenge

no code implementations5 May 2016 Michel Valstar, Jonathan Gratch, Bjorn Schuller, Fabien Ringeval, Denis Lalanne, Mercedes Torres Torres, Stefan Scherer, Guiota Stratou, Roddy Cowie, Maja Pantic

The Audio/Visual Emotion Challenge and Workshop (AVEC 2016) "Depression, Mood and Emotion" will be the sixth competition event aimed at comparison of multimedia processing and machine learning methods for automatic audio, visual and physiological depression and emotion analysis, with all participants competing under strictly the same conditions.

Emotion Recognition

The Distress Analysis Interview Corpus of human and computer interviews

no code implementations LREC 2014 Jonathan Gratch, Ron artstein, Gale Lucas, Giota Stratou, Stefan Scherer, Angela Nazarian, Rachel Wood, Jill Boberg, David DeVault, Stacy Marsella, David Traum, Skip Rizzo, Louis-Philippe Morency

The Distress Analysis Interview Corpus (DAIC) contains clinical interviews designed to support the diagnosis of psychological distress conditions such as anxiety, depression, and post traumatic stress disorder.

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