awesome-logical-query
github.com/neuralgraphdatabases/awesome-logical-query ↗A collection of resources on the topic of Complex Logical Query Answering
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:scroll: Categorization of papers📈 Datasets and Benchmarking:wrench: ImplementationsAll Papers on Complex Logical Query Answering (54)Application Papers (7)Potentially Relevant
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All Papers on Complex Logical Query Answering (54)
- Adapting Neural Link Predictors for Complex Query AnsweringQueries | Query Operators
- Analysis of Attention Mechanisms in Box-Embedding SystemsQueries | Query Operators
- Answering Complex Logical Queries on Knowledge Graphs via Query Computation Tree OptimizationQueries | Query Operators
- Answering complex queries in knowledge graphs with bidirectional sequence encodersInference (datasets)
- Approximate knowledge graph query answering: from ranking to binary classificationMetrics
- Benchmarking the Combinatorial Generalizability of Complex Query Answering on Knowledge GraphsInference (datasets)
Potentially Relevant
- Combining RDF Graph Data and Embedding Models for an Augmented Knowledge Graph
- Hybrid Structured and Similarity Queries over Wikidata plus Embeddings with Kypher-V
- Towards Empty Answers in SPARQL: Approximating Querying with RDF Embedding
- TrQuery: An Embedding-based Framework for Recommanding SPARQL Queries
Application Papers (7)
- Context-aware explainable recommendation based on domain knowledge graph
- Knowledge base question answering by case-based reasoning over subgraphsGraphs | Background Semantics
- Lego: Latent execution-guided reasoning for multi-hop question answering on knowledge graphs
- SE-KGE: A Location-Aware Knowledge Graph Embedding Model for Geographic Question Answering and Spatial Semantic Lifting
- Towards High-Order Complementary Recommendation via Logical Reasoning Network
- Unifying structure reasoning and language model pre-training for complex reasoning
📈 Datasets and Benchmarking
- Graph Query SamplerDataset tools
- Neural-symbolic Approach for Ontology-mediated Query AnsweringInference (datasets)
- Sequential Query Encoding For Complex Query Answering on Knowledge GraphsInference (datasets)
:scroll: Categorization of papers
- HypEQueries | Query Operators
- kgTransformerQueries | Query Operators
Showing a sample of 88 resources. View the full list on GitHub →