Knowledge Graph semantic enhancement of input data for improving AI
- URL: http://arxiv.org/abs/2005.04726v1
- Date: Sun, 10 May 2020 17:37:38 GMT
- Title: Knowledge Graph semantic enhancement of input data for improving AI
- Authors: Shreyansh Bhatt, Amit Sheth, Valerie Shalin, Jinjin Zhao
- Abstract summary: Intelligent systems designed using machine learning algorithms require a large number of labeled data.
Background knowledge provides complementary, real world factual information that can augment the limited labeled data to train a machine learning algorithm.
The Knowledge Graph (KG) is in vogue as for many practical applications, it is convenient and useful to organize this background knowledge in the form of a graph.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Intelligent systems designed using machine learning algorithms require a
large number of labeled data. Background knowledge provides complementary, real
world factual information that can augment the limited labeled data to train a
machine learning algorithm. The term Knowledge Graph (KG) is in vogue as for
many practical applications, it is convenient and useful to organize this
background knowledge in the form of a graph. Recent academic research and
implemented industrial intelligent systems have shown promising performance for
machine learning algorithms that combine training data with a knowledge graph.
In this article, we discuss the use of relevant KGs to enhance input data for
two applications that use machine learning -- recommendation and community
detection. The KG improves both accuracy and explainability.
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