Question answering with subgraph embeddings
This paper presents a system which learns to answer questions on a broad range of topics
from a knowledge base using few hand-crafted features. Our model learns low-dimensional
embeddings of words and knowledge base constituents; these representations are used to
score natural language questions against candidate answers. Training our system using
pairs of questions and structured representations of their answers, and pairs of question
paraphrases, yields competitive results on a competitive benchmark of the literature.
from a knowledge base using few hand-crafted features. Our model learns low-dimensional
embeddings of words and knowledge base constituents; these representations are used to
score natural language questions against candidate answers. Training our system using
pairs of questions and structured representations of their answers, and pairs of question
paraphrases, yields competitive results on a competitive benchmark of the literature.
This paper presents a system which learns to answer questions on a broad range of topics from a knowledge base using few hand-crafted features. Our model learns low-dimensional embeddings of words and knowledge base constituents; these representations are used to score natural language questions against candidate answers. Training our system using pairs of questions and structured representations of their answers, and pairs of question paraphrases, yields competitive results on a competitive benchmark of the literature.
arxiv.org