Interpretable Multi-Source Data Fusion Through Latent Variable Gaussian Process
With the advent of artificial intelligence and machine learning, various domains of science and engineering communities have leveraged data-driven surrogates to model complex systems through fusing numerous sources of information (data) from published papers, patents, open repositories, or other res...
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Zusammenfassung: | With the advent of artificial intelligence and machine learning, various
domains of science and engineering communities have leveraged data-driven
surrogates to model complex systems through fusing numerous sources of
information (data) from published papers, patents, open repositories, or other
resources. However, not much attention has been paid to the differences in
quality and comprehensiveness of the known and unknown underlying physical
parameters of the information sources, which could have downstream implications
during system optimization. Additionally, existing methods cannot fuse
multi-source data into a single predictive model. Towards resolving this issue,
a multi-source data fusion framework based on Latent Variable Gaussian Process
(LVGP) is proposed. The individual data sources are tagged as a characteristic
categorical variable that are mapped into a physically interpretable latent
space, allowing the development of source-aware data fusion modeling.
Additionally, a dissimilarity metric based on the latent variables of LVGP is
introduced to study and understand the differences in the sources of data. The
proposed approach is demonstrated on and analyzed through two mathematical and
two materials science case studies. From the case studies, it is observed that
compared to using single-source and source unaware machine learning models, the
proposed multi-source data fusion framework can provide better predictions for
sparse-data problems. |
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DOI: | 10.48550/arxiv.2402.04146 |