Abstract

The paper presents a prosody model of native English (L1) continuous speech as corrective prosodic feedback for non-native learners. The model incorporates both hierarchical discourse association and information structure to (1) pinpoint the prosodic features of multi-phrase continuous speech, and (2) simulate native-like expressive speech using corpus of North American and Taiwan L2 English. The bottom-up, additive, data-driven model aims to generate L1-like expressive continuous speech with built-in phonetic and phonological specifications at the lexical level, syntactic/semantic specifications at the next higher phrase and sentence levels, and completed with patterned paragraph associations and prosodic projections of information allocation at higher levels. The hierarchical model successfully allows us to identify L1-L2 differences by prosodic modules/patterns as novel additional features “discourse structure” and “information density” reliably nail down L1-L2 prosodic differences related to phrase association as well as information placement. Our L1 prosodic model with the proposed predictors and optimized model trained from L1 speech corpus showed increase of prediction over existing methods. As a corrective feedback for L2 learners, these predicted L1 prosodic features were compared with a baseline model by objective evaluation (RMS error and correlation) then superimposed onto the L2 speech tokens. Resynthesized L2 tokens were subsequently compared with the original L2 tokens for degrees of perceived accent using subjective evaluation (native-listener perception test). We believe the proposed model can be an effective alternative for implementing computer-assisted language learning (CALL) systems that helps generate L1-like prosody from text, and at the same time serves as corrective feedback for L2 learners.

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