TL;DR
This paper introduces ADKGD, a dual-channel learning algorithm for detecting anomalies in knowledge graphs, improving accuracy by leveraging entity and triplet perspectives and integrating internal and contextual information.
Contribution
The paper proposes a novel dual-channel learning framework with cross-layer integration and KL-loss for enhanced anomaly detection in knowledge graphs.
Findings
ADKGD outperforms existing anomaly detection methods on real-world KGs.
Dual-channel approach improves representation learning accuracy.
Cross-layer integration enhances detection performance.
Abstract
In the current development of large language models (LLMs), it is important to ensure the accuracy and reliability of the underlying data sources. LLMs are critical for various applications, but they often suffer from hallucinations and inaccuracies due to knowledge gaps in the training data. Knowledge graphs (KGs), as a powerful structural tool, could serve as a vital external information source to mitigate the aforementioned issues. By providing a structured and comprehensive understanding of real-world data, KGs enhance the performance and reliability of LLMs. However, it is common that errors exist in KGs while extracting triplets from unstructured data to construct KGs. This could lead to degraded performance in downstream tasks such as question-answering and recommender systems. Therefore, anomaly detection in KGs is essential to identify and correct these errors. This paper…
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