A dependence-based framework using CDR and FMCA for time-series classification outperforms HMMs and spiking neural networks on the TI-46 speech corpus with a model under 5 MB.
Time-Series Classification with Multivariate Statistical Dependence Features
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abstract
In this paper, we propose a novel framework for non-stationary time-series analysis that replaces conventional correlation-based statistics with direct estimation of statistical dependence in the normalized joint density of input and target signals, the cross density ratio (CDR). Unlike windowed correlation estimates, this measure is independent of sample order and robust to regime changes. The method builds on the functional maximal correlation algorithm (FMCA), which constructs a projection space by decomposing the eigenspectrum of the CDR. Multiscale features from this eigenspace are classified using a lightweight single-hidden-layer perceptron. On the TI-46 digit speech corpus, our approach outperforms hidden Markov models (HMMs) and state-of-the-art spiking neural networks, achieving higher accuracy with fewer than 10 layers and a storage footprint under 5 MB.
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cs.LG 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Time-Series Classification with Multivariate Statistical Dependence Features
A dependence-based framework using CDR and FMCA for time-series classification outperforms HMMs and spiking neural networks on the TI-46 speech corpus with a model under 5 MB.