Scalable Neural Methods for Reasoning With a Symbolic Knowledge Base
About
We describe a novel way of representing a symbolic knowledge base (KB) called a sparse-matrix reified KB. This representation enables neural modules that are fully differentiable, faithful to the original semantics of the KB, expressive enough to model multi-hop inferences, and scalable enough to use with realistically large KBs. The sparse-matrix reified KB can be distributed across multiple GPUs, can scale to tens of millions of entities and facts, and is orders of magnitude faster than naive sparse-matrix implementations. The reified KB enables very simple end-to-end architectures to obtain competitive performance on several benchmarks representing two families of tasks: KB completion, and learning semantic parsers from denotations.
William W. Cohen, Haitian Sun, R. Alex Hofer, Matthew Siegler• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Knowledge Base Question Answering | WEBQSP (test) | Hit@152.7 | 143 | |
| Multi-hop Knowledge Graph Question Answering | WQP | Hit@152.7 | 14 | |
| Multi-hop Knowledge Graph Question Answering | MetaQA | Hit@1 (2-hop)81.1 | 11 |
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