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Title:
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TOWARDS LLM-GENERATED EXPLANATIONS FOR COMPONENT-BASED KNOWLEDGE GRAPH QUESTION ANSWERING SYSTEMS |
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Author(s):
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Dennis Schiese, Aleksandr Perevalov and Andreas Both |
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ISBN:
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978-989-8704-62 |
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Editors:
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Paula Miranda and Pedro IsaĆas |
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Year:
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2024 |
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Edition:
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Single |
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Keywords:
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Explainable AI, Large Language Models, Knowledge Graphs, RDF, SPARQL, Question Answering |
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Type:
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Full |
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First Page:
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267 |
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Last Page:
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276 |
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Language:
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English |
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Cover:
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Full Contents:
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click to dowload
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Paper Abstract:
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Over time, software systems have reached a level of complexity that makes it difficult for their developers and users to
explain particular decisions made by them. In this paper, we focus on the explainability of component-based systems for
Question Answering (QA). These components often conduct processes driven by AI methods, in which behavior and
decisions cannot be clearly explained or justified, s.t., even for QA experts interpreting the executed process and its results
is hard. To address this challenge, we present an approach that considers the components' input and output data flows as a
source for representing the behavior and provide explanations for the components, enabling users to comprehend what
happened. In the QA framework used here, the data flows of the components are represented as SPARQL queries (inputs)
and RDF triples (outputs). Hence, we are also providing valuable insights on verbalization regarding these data types.
In our experiments, the approach generates explanations while following template-based settings (baseline) or via the use
of Large Language Models (LLMs) with different configurations (automatic generation). Our evaluation shows that the
explanations generated via LLMs achieve high quality and mostly outperform template-based approaches according to the
users' ratings. Therefore, it enables us to automatically explain the behavior and decisions of QA components to humans
while using RDF and SPARQL as a context for explanations. |
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