Tournament on Path: Relation Abstraction and Ranking for Knowledge Graph Reasoning
Hämtar...
Ladda ner
Publicerad
Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
ISSN
Volymtitel
Utgivare
Sammanfattning
While Knowledge Graph Question Answering (KGQA) leverages Large Language
Models (LLMs) toperform complex multi-hop reasoning, existing training-free frame
works like Think-on-Graph (ToG) suffer from inherent limitations, including locally
scoped pruning, unstable pointwise scoring, and the indiscriminate discarding of
valuable candidates through random sampling. To address these challenges, this
thesis introduces Tournament on Path (ToP), a novel reasoning framework that
enhances relation abstraction and candidate ranking. The proposed framework systematically tackles the baseline’s flaws by implementing an entity-agnostic relation
path pruning strategy that captures global path semantics and reduces the search
space. To effectively operationalize this, ToP is instantiated into two specific variants. System 1 employs a hybrid lexical-semantic pre-filtering combined with a
chunked tournament selection algorithm to stabilize ranking across large candidate
pools. System 2 relies on purely semantic pre-filtering and a pairwise tournament
selection method, introducing a topic entity masking mechanism to strictly prevent
LLMs from answering using unverified internal knowledge. Experimental evaluations across four diverse benchmarks (CWQ, WebQSP, WebQuestions, and GrailQA)
demonstrate that both variants consistently outperform the ToG baseline. The results confirm that these strategies not only improve reasoning accuracy but also
resolve the "negative scaling" behavior, establishing a computationally efficient and
consistently reliable framework for different language models.
Beskrivning
Ämne/nyckelord
Knowledge Graph Question Answering, Large Language Models, Multi hop Reasoning, Relation Abstraction, Tournament Selection, Path Pruning.
