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Recognising dog movement with behaviour-specific machine learning models: bout length as a biologically relevant parameter for window size

Gábor Csizmadia et al · BMC · 2026

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Abstract Background Machine learning methods are widely used to detect behavioural data patterns. Although these new mathematical methods are useful tools, the interpretation of the results are often ambivalent unless biologically relevant parameters are included in the analyses. In case of classical (non-neural) machine learning (ML) methods, a crucial first step in time series data analysis is to determine the window length for which the features are computed as input variables for the ML training phase. The bout length of behaviours could be a relevant parameter to determine the window length used by the machine learning methods. Methods In this research the movements of dogs were observed. Eight behaviours were defined and motion data was collected using a smartwatch attached to the collar of the dogs. The behaviour sequences of 56 freely moving dogs of various breeds were analysed by using a specific software (SensDog by CEM Inc.). Behaviour recognition was based on binary classification evaluated with a Light Gradient Boosted Machine (LGBM) learning algorithm. For signal processing, sliding window technique was used to find the best window size for the analysis of each behavior. Results Results showed that for all behaviours, the best recognition was obtained when the window size corresponded to the median bout length of that particular behaviour. Conclusions In summary, the most effective strategy to significantly improve the accuracy of behaviour recognition is to use behaviour-specific parameters in the binary classification models.

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APA 7

al, G. C. E. (2026). Recognising dog movement with behaviour-specific machine learning models: bout length as a biologically relevant parameter for window size. https://doi.org/10.1186/s12917-026-05294-1

MLA

al, Gábor Csizmadia et. "Recognising dog movement with behaviour-specific machine learning models: bout length as a biologically relevant parameter for window size." 2026. https://doi.org/10.1186/s12917-026-05294-1.

Chicago

al, Gábor Csizmadia et. 2026. "Recognising dog movement with behaviour-specific machine learning models: bout length as a biologically relevant parameter for window size.". https://doi.org/10.1186/s12917-026-05294-1.

Harvard

al, G. C. E. 2026, Recognising dog movement with behaviour-specific machine learning models: bout length as a biologically relevant parameter for window size, BMC, available at: https://doi.org/10.1186/s12917-026-05294-1 [Accessed 29 Jun. 2026].

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Título
Recognising dog movement with behaviour-specific machine learning models: bout length as a biologically relevant parameter for window size
Autor / colaboradores
Gábor Csizmadia et al
Editorial
BMC
Año de publicación
2026
ISSN
1746-6148
ISSN
1746-6148
Idioma
eng

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