Explicit and Implicit Consumer Electronics Information Integration via Automatic Large Language Model Construction
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- @Article{Xue:TCE,
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author = "Xingsi Xue and Xingwang Li",
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title = "Explicit and Implicit Consumer Electronics Information
Integration via Automatic Large Language Model
Construction",
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journal = "IEEE Transactions on Consumer Electronics",
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keywords = "genetic algorithms, genetic programming, Consumer
electronics, Accuracy, Complexity theory, Optimisation,
Interoperability, Uncertainty, Training, Terminology,
Smart homes, Simple object access protocol, Information
Integration, Large Language Model, ANN, Rough Set",
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ISSN = "1558-4127",
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DOI = "
doi:10.1109/TCE.2025.3526772",
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abstract = "Integrating diverse Consumer Electronics (CE)
information is essential to enhance and optimise user
experiences, but CE Information Integration (CEII)
faces challenges arising from differences in entity
descriptions. In recent years, Large Language Models
(LLMs) have emerged as valuable tools for analysing
heterogeneous CE data due to their deep contextual
embeddings. However, different LLMs capture various
nuances and complexity levels within the CE data, and
none of them can ensure their effectiveness in all
heterogeneous scenarios. To address this issue, this
paper proposes an automatic LLM Construction for CEII,
which can determine both explicit and implicit CE
entity mappings. First, a hybrid Genetic Programming is
developed to determine explicit entity mappings using a
new individual representation, an innovative fitness
function, and a Probability-based Incremental Learning
algorithm. Then, a novel Rough Set based matching
method is presented to efficiently induce implicit CE
entity mappings, which uses the entity feature
relevance metric and the dominance-based matching
approach. The experiment tests the performance of our
approach with the OAEI's KG and common KG datasets, and
the practical CE datasets in the smart home context.
The experimental results show the effectiveness of the
developed approach, which significantly outperforms the
state-of-the-art entity matching methods.",
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notes = "Also known as \cite{10829859}",
- }
Genetic Programming entries for
Xingsi Xue
Xingwang Li
Citations