Latent Dependency Forest Models
Chu, Shanbo (ShanghaiTech University) | Jiang, Yong (ShanghaiTech University) | Tu, Kewei (ShanghaiTech University)
Probabilistic modeling is one of the foundations of modern Learning the structure of a probabilistic model resembles machine learning and artificial intelligence, which aims to learning the set of production rules of a grammar, while compactly represent the joint probability distribution of random learning model parameters resembles learning grammar rule variables. The most widely used approach for probabilistic probabilities. From the unsupervised grammar learning literature, modeling is probabilistic graphical models. A probabilistic one can see that learning approaches based on PCFGs graphical model represents a probability distribution with a have not been very successful, while the state-of-the-art performance directed or undirected graph. It represents random variables has mostly been achieved based on less expressive with the nodes in the graph and uses the edges in the graph to models such as dependency grammars (DGs) (Klein and encode the probabilistic relationships between random variables.
Feb-14-2017
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- Asia (0.47)
- North America > United States
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- Education > Curriculum > Subject-Specific Education (0.34)