Lu Jiali, Surendralal Sumithra, Bouchard Kristofer E, Jin Dezhe Z
Department of Physics, The Pennsylvania State University, University Park, Pennsylvania 16802, USA.
Symbiosis School for Liberal Arts, Symbiosis International (Deemed University), Pune 411014, Maharashtra, India.
J Neurosci. 2025 Feb 26;45(9):e0522242024. doi: 10.1523/JNEUROSCI.0522-24.2024.
Generative models have diverse applications, including language processing and birdsong analysis. In this study, we demonstrate how a statistical test, designed to prevent overgeneralization in sequence generation, can be used to infer minimal models for the syllable sequences in Bengalese finch songs. We focus on the partially observable Markov model (POMM), which consists of states and the probabilistic transitions between them. Each state is associated with a specific syllable, with the possibility that multiple states may correspond to the same syllable. This characteristic differentiates the POMM from a standard Markov model, where each syllable is linked to a single state. The presence of multiple states for a syllable suggests that transitions between syllables are influenced by the specific contexts in which these transitions occur. We apply this method to analyze the songs of six adult male Bengalese finches, both before and after they were deafened. Our results indicate that auditory feedback plays a crucial role in shaping the context-dependent syllable transitions characteristic of Bengalese finch songs.
生成模型有多种应用,包括语言处理和鸟鸣分析。在本研究中,我们展示了一种旨在防止序列生成中过度泛化的统计测试如何用于推断孟加拉雀歌声中音节序列的最小模型。我们专注于部分可观测马尔可夫模型(POMM),它由状态以及它们之间的概率转移组成。每个状态与一个特定音节相关联,多个状态可能对应于同一个音节。这一特征将POMM与标准马尔可夫模型区分开来,在标准马尔可夫模型中每个音节与单个状态相连。一个音节存在多个状态表明音节之间的转移受到这些转移发生时的特定上下文的影响。我们应用这种方法分析了六只成年雄性孟加拉雀在致聋前后的歌声。我们的结果表明,听觉反馈在塑造孟加拉雀歌声中依赖上下文的音节转移特征方面起着关键作用。