SDCLASJul 23, 2025

BoSS: Beyond-Semantic Speech

arXiv:2507.17563v1
Originality Synthesis-oriented
AI Analysis

This addresses the need for more context-aware human-machine communication in speech technologies, though it is incremental as it formalizes existing ideas rather than proposing a new method.

The paper tackles the problem of modern speech technologies failing to capture implicit signals like emotions and context in human communication, and it introduces a hierarchical framework (L1-L5) and the concept of Beyond-Semantic Speech (BoSS) to benchmark and characterize these dimensions, finding that current spoken language models struggle to interpret beyond-semantic signals.

Human communication involves more than explicit semantics, with implicit signals and contextual cues playing a critical role in shaping meaning. However, modern speech technologies, such as Automatic Speech Recognition (ASR) and Text-to-Speech (TTS) often fail to capture these beyond-semantic dimensions. To better characterize and benchmark the progression of speech intelligence, we introduce Spoken Interaction System Capability Levels (L1-L5), a hierarchical framework illustrated the evolution of spoken dialogue systems from basic command recognition to human-like social interaction. To support these advanced capabilities, we propose Beyond-Semantic Speech (BoSS), which refers to the set of information in speech communication that encompasses but transcends explicit semantics. It conveys emotions, contexts, and modifies or extends meanings through multidimensional features such as affective cues, contextual dynamics, and implicit semantics, thereby enhancing the understanding of communicative intentions and scenarios. We present a formalized framework for BoSS, leveraging cognitive relevance theories and machine learning models to analyze temporal and contextual speech dynamics. We evaluate BoSS-related attributes across five different dimensions, reveals that current spoken language models (SLMs) are hard to fully interpret beyond-semantic signals. These findings highlight the need for advancing BoSS research to enable richer, more context-aware human-machine communication.

Foundations

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