Bayesian model-based online sequence segmentation

Bayesian algorithm for segmenting real-valued input-output data into non-overlapping segments

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The Bayesian model-based online sequence segmentation (BMOSS) class implements a recursive algorithm for partitioning a sequence of real-valued input-output data into non-overlapping segments. The segment boundaries are chosen under the assumption that, within each segment, the data follow a multi-variate linear model.

Segmentation is carried out in an online fashion by recursively updating a set of hypotheses. The hypotheses capture the belief about the current segment, e.g. its duration and the linear relationship between inputs and outputs, given all the data so far. Each time a new pair of data is received, the hypotheses are propagated and reweighted to reflect this new knowledge.

This submission includes a test function that generates a set of synthetic data and compares the true segment boundaries against those identified by a BMOSS object.

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INSTRUCTIONS:

After downloading this submission, extract the compressed file inside your MatLab working directory and run the test function (bmosstest.m) for a demonstration.

引用格式

Gabriel Agamennoni (2026). Bayesian model-based online sequence segmentation (https://ww2.mathworks.cn/matlabcentral/fileexchange/45560-bayesian-model-based-online-sequence-segmentation), MATLAB Central File Exchange. 检索时间: .

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版本 已发布 发行说明 Action
1.2.0.0

Major extension and minor bug fix.

1.1.0.0

Minor bug fix and slight generalization.

1.0.0.0