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–Neural Information Processing Systems
The authors propose a dynamic hierarchical clustering model which allows hierarchies clusters (topics) and corresponding parameters (popularities, word frequencies) to vary in time. Indeed, it is a stochastic process with tree structured marginals so a different hierarchical clustering is specified per time index. Since in general it is a computationally expensive task to do full Bayesian inference they propose an approximate inference scheme where the parameters of each node are MAP estimates and the node re-assignment of observations is done by a Gibbs step. It is based on the tree structured stick breaking process so it allows the observations to be assigned to internal nodes and leaves of the tree rather than just leaves or complete paths. My main concern is that it is not fully exploiting the non-parametric nature of the model since the authors fixed the depth of the trees in the experiments. It would be nice that the depth varied over time or that a more detailed sensitivity analysis was presented.
Neural Information Processing Systems
Feb-9-2025, 04:42:57 GMT
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