Abstract:
In this paper, learning of tree-structured Gaussian graphical models from distributed data is addressed. In our model, samples are stored in a set of distributed machines...Show MoreMetadata
Abstract:
In this paper, learning of tree-structured Gaussian graphical models from distributed data is addressed. In our model, samples are stored in a set of distributed machines where each machine has access to only a subset of features. A central machine is then responsible for learning the structure based on received messages from the other nodes. We present a set of communication-efficient strategies, which are theoretically proved to convey sufficient information for reliable learning of the structure. In particular, our analyses show that even if each machine sends only the signs of its local data samples to the central node, the tree structure can still be recovered with high accuracy. Our simulation results on both synthetic and real-world datasets show that our strategies achieve a desired accuracy in inferring the underlying structure while spending a small budget on communication.
Published in: IEEE Transactions on Signal Processing ( Volume: 67, Issue: 1, 01 January 2019)
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- IEEE Keywords
- Index Terms
- Tree Structure ,
- Communication Constraints ,
- Gaussian Graphical Models ,
- Tree-structured Model ,
- Structure Learning ,
- Correlation Coefficient ,
- Quantum ,
- Learning Algorithms ,
- Upper Bound ,
- Human Bone ,
- Maximum Likelihood Tree ,
- Proof Of Theorem ,
- Normality Of Variance ,
- Mutual Information ,
- Pairs Of Variables ,
- Problem Setting ,
- Bitrate ,
- Markov Random Field ,
- Local Dataset ,
- Local Machine ,
- Crossover Events ,
- Sparse Method ,
- Rate-distortion ,
- True Edges ,
- Sample Correlation ,
- Estimation Error ,
- Tree Edges ,
- Sparse Structure ,
- Communication Cost
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Tree Structure ,
- Communication Constraints ,
- Gaussian Graphical Models ,
- Tree-structured Model ,
- Structure Learning ,
- Correlation Coefficient ,
- Quantum ,
- Learning Algorithms ,
- Upper Bound ,
- Human Bone ,
- Maximum Likelihood Tree ,
- Proof Of Theorem ,
- Normality Of Variance ,
- Mutual Information ,
- Pairs Of Variables ,
- Problem Setting ,
- Bitrate ,
- Markov Random Field ,
- Local Dataset ,
- Local Machine ,
- Crossover Events ,
- Sparse Method ,
- Rate-distortion ,
- True Edges ,
- Sample Correlation ,
- Estimation Error ,
- Tree Edges ,
- Sparse Structure ,
- Communication Cost
- Author Keywords