TY - JOUR
T1 - Engineering conversation
T2 - Understanding the control requirements of language production in monologue and dialogue
AU - Gambi, Chiara
AU - Zhang, Fan
AU - Pickering, Martin J.
N1 - Chiara Gambi: Writing – original draft, Visualization, Funding acquisition, Conceptualization. Fan Zhang: Writing – review & editing, Funding acquisition, Conceptualization. Martin J. Pickering: Writing – review & editing.
PY - 2024/8/27
Y1 - 2024/8/27
N2 - Both artificial and biological systems are faced with the challenge of noisy and uncertain estimation of the state of the world, in contexts where feedback is often delayed. This challenge also applies to the processes of language production and comprehension, both when they take place in isolation (e.g., in monologue or solo reading) and when they are combined as is the case in dialogue. Crucially, we argue, dialogue brings with it some unique challenges. In this paper, we describe three such challenges within the general framework of control theory, drawing analogies to mechanical and biological systems where possible: (1) the need to distinguish between self- and other-generated utterances; (2) the need to adjust the amount of advance planning (i.e., the degree to which planning precedes articulation) flexibly to achieve timely turn-taking; (3) the need to track changing conversational goals. We show that message-to-sound models of language production (i.e., those the cover the whole process from message generation to articulation) tend to implement fairly simple control architectures. However, we argue that more sophisticated control architectures are necessary to build language production models that can account for both monologue and dialogue.
AB - Both artificial and biological systems are faced with the challenge of noisy and uncertain estimation of the state of the world, in contexts where feedback is often delayed. This challenge also applies to the processes of language production and comprehension, both when they take place in isolation (e.g., in monologue or solo reading) and when they are combined as is the case in dialogue. Crucially, we argue, dialogue brings with it some unique challenges. In this paper, we describe three such challenges within the general framework of control theory, drawing analogies to mechanical and biological systems where possible: (1) the need to distinguish between self- and other-generated utterances; (2) the need to adjust the amount of advance planning (i.e., the degree to which planning precedes articulation) flexibly to achieve timely turn-taking; (3) the need to track changing conversational goals. We show that message-to-sound models of language production (i.e., those the cover the whole process from message generation to articulation) tend to implement fairly simple control architectures. However, we argue that more sophisticated control architectures are necessary to build language production models that can account for both monologue and dialogue.
KW - control theory
KW - forward models
KW - language production
KW - planning
KW - dialogue
U2 - 10.1016/j.jneuroling.2024.101229
DO - 10.1016/j.jneuroling.2024.101229
M3 - Article
SN - 0911-6044
VL - 73
JO - Journal of neurolinguistics
JF - Journal of neurolinguistics
M1 - 101229
ER -