Towards K-means-friendly Spaces: Simultaneous Deep Learning and Clustering
University of Minnesota · Iowa State University
Abstract
Most learning approaches treat dimensionality reduction (DR) and clustering separately (i.e., sequentially), but recent research has shown that optimizing the two tasks jointly can substantially improve the performance of both. The premise behind the latter genre is that the data samples are obtained via linear transformation of latent representations that are easy to cluster; but in practice, the transformation from the latent space to the data can be more complicated. In this work, we assume that this transformation is an unknown and possibly nonlinear function. To recover the `clustering-friendly' latent representations and to better cluster the data, we propose a joint DR and K-means clustering approach in…
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Authors
4Topics & keywords
- Computer science
- Cluster analysis
- Artificial intelligence
- Scalability
- Transformation (genetics)
- Artificial neural network
- Machine learning
- Dimensionality reduction