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- arXiv.2403.07311 type Entity assertion.
- Analogy type Workflow assertion.
- ConGlr type Workflow assertion.
- ConvRot type Workflow assertion.
- DistMult type Workflow assertion.
- KgLlmAblationFramework type Workflow assertion.
- KgLlmFramework type Workflow assertion.
- Rescal type Workflow assertion.
- TransE type Workflow assertion.
- WsGat type Workflow assertion.
- CompleX type Workflow assertion.
- GraphEdit type Workflow assertion.
- InstructGraph type Workflow assertion.
- MuseGraph type Workflow assertion.
- Analogy label "Analogy" assertion.
- ConGlr label "ConGLR" assertion.
- ConvRot label "ConvRot" assertion.
- DistMult label "DistMult" assertion.
- KgLlmAblationFramework label "KG-LLM (ablation) Framework" assertion.
- KgLlmFramework label "Knowledge Graph Large Language Model Framework (KG-LLM)" assertion.
- Rescal label "RESCAL" assertion.
- TransE label "TransE" assertion.
- WsGat label "wsGAT" assertion.
- CompleX label "CompleX" assertion.
- GraphEdit label "GraphEdit" assertion.
- InstructGraph label "InstructGraph" assertion.
- MuseGraph label "MuseGraph" assertion.
- KgLlmAblationFramework comment "This method is a variant of the KG-LLM Framework, specifically designed with a simplified "ablation knowledge prompt." Unlike the full KG-LLM prompt, it removes explicit instructions, textualized IDs, and CoT reasoning from the expected response. It is introduced and evaluated by the authors as a baseline within their proposed approach to demonstrate the effectiveness of the advanced prompting strategies in the full KG-LLM Framework for multi-hop link prediction." assertion.
- KgLlmFramework comment "The KG-LLM Framework is a novel method that converts structured KG data (multi-hop paths) into natural language Chain-of-Thought (CoT) prompts. These prompts are then used to instruction fine-tune LLMs to enhance multi-hop link prediction and relation prediction performance in KGs. The method leverages LLMs' generative and reasoning capabilities to solve KG completion tasks." assertion.
- arXiv.2403.07311 describes KgLlmAblationFramework assertion.
- arXiv.2403.07311 describes KgLlmFramework assertion.
- arXiv.2403.07311 discusses Analogy assertion.
- arXiv.2403.07311 discusses ConGlr assertion.
- arXiv.2403.07311 discusses ConvRot assertion.
- arXiv.2403.07311 discusses DistMult assertion.
- arXiv.2403.07311 discusses Rescal assertion.
- arXiv.2403.07311 discusses TransE assertion.
- arXiv.2403.07311 discusses WsGat assertion.
- arXiv.2403.07311 discusses CompleX assertion.
- arXiv.2403.07311 discusses GraphEdit assertion.
- arXiv.2403.07311 discusses InstructGraph assertion.
- arXiv.2403.07311 discusses MuseGraph assertion.
- KgLlmAblationFramework subject LLMAugmentedKGCompletion assertion.
- KgLlmFramework subject LLMAugmentedKGCompletion assertion.
- arXiv.2403.07311 title "Knowledge Graph Large Language Model (KG-LLM) for Link Prediction" assertion.
- KgLlmAblationFramework hasTopCategory LLMAugmentedKG assertion.
- KgLlmFramework hasTopCategory LLMAugmentedKG assertion.