Lexical Feedback in the Time-Invariant String Kernel (TISK) Model of Spoken Word Recognition

J Cogn. 2024 Apr 26;7(1):38. doi: 10.5334/joc.362. eCollection 2024.

Abstract

The Time-Invariant String Kernel (TISK) model of spoken word recognition (Hannagan, Magnuson & Grainger, 2013; You & Magnuson, 2018) is an interactive activation model with many similarities to TRACE (McClelland & Elman, 1986). However, by replacing most time-specific nodes in TRACE with time-invariant open-diphone nodes, TISK uses orders of magnitude fewer nodes and connections than TRACE. Although TISK performed remarkably similarly to TRACE in simulations reported by Hannagan et al., the original TISK implementation did not include lexical feedback, precluding simulation of top-down effects, and leaving open the possibility that adding feedback to TISK might fundamentally alter its performance. Here, we demonstrate that when lexical feedback is added to TISK, it gains the ability to simulate top-down effects without losing the ability to simulate the fundamental phenomena tested by Hannagan et al. Furthermore, with feedback, TISK demonstrates graceful degradation when noise is added to input, although parameters can be found that also promote (less) graceful degradation without feedback. We review arguments for and against feedback in cognitive architectures, and conclude that feedback provides a computationally efficient basis for robust constraint-based processing.

Keywords: Computational models; feedback; interaction; neural networks; spoken word recognition.

Grants and funding

This research was supported in part by U.S. National Science Foundation grants BCS-PAC 1754284 and BCS-PAC 2043903 (PI: JSM). This research was also supported in part by the Basque Government, Spain through the BERC 2022–2025 program and by the Spanish State Research Agency, Spain through BCBL Severo Ochoa excellence accreditation CEX2020-001010-S and through project PID2020-119131GB-I00 (BLIS).