HCCLCYJan 5, 2024

Exploring Gender Biases in Language Patterns of Human-Conversational Agent Conversations

arXiv:2401.03030v11 citationsh-index: 1
Originality Incremental advance
AI Analysis

It addresses gender bias perpetuation in AI for conversational agent designers and users, but is incremental as it builds on existing critiques with a focus on linguistic analysis.

This research investigates how gender biases in conversational agents (CAs) affect user linguistic styles and reinforce stereotypes, aiming to inform ethical design practices for promoting gender equality.

With the rise of human-machine communication, machines are increasingly designed with humanlike characteristics, such as gender, which can inadvertently trigger cognitive biases. Many conversational agents (CAs), such as voice assistants and chatbots, default to female personas, leading to concerns about perpetuating gender stereotypes and inequality. Critiques have emerged regarding the potential objectification of females and reinforcement of gender stereotypes by these technologies. This research, situated in conversational AI design, aims to delve deeper into the impacts of gender biases in human-CA interactions. From a behavioral and communication research standpoint, this program focuses not only on perceptions but also the linguistic styles of users when interacting with CAs, as previous research has rarely explored. It aims to understand how pre-existing gender biases might be triggered by CAs' gender designs. It further investigates how CAs' gender designs may reinforce gender biases and extend them to human-human communication. The findings aim to inform ethical design of conversational agents, addressing whether gender assignment in CAs is appropriate and how to promote gender equality in design.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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