LGMLJan 2, 2020

On Large-Scale Dynamic Topic Modeling with Nonnegative CP Tensor Decomposition

arXiv:2001.00631v28 citations
AI Analysis

This addresses the need for better temporal analysis in social and data sciences, though it appears incremental as it adapts an existing tensor method to a new application.

The paper tackles the problem of dynamic topic modeling for large-scale temporal data by proposing nonnegative CP tensor decomposition (NNCPD) to preserve temporal information, achieving significantly improved results compared to typical NMF-based methods.

There is currently an unprecedented demand for large-scale temporal data analysis due to the explosive growth of data. Dynamic topic modeling has been widely used in social and data sciences with the goal of learning latent topics that emerge, evolve, and fade over time. Previous work on dynamic topic modeling primarily employ the method of nonnegative matrix factorization (NMF), where slices of the data tensor are each factorized into the product of lower-dimensional nonnegative matrices. With this approach, however, information contained in the temporal dimension of the data is often neglected or underutilized. To overcome this issue, we propose instead adopting the method of nonnegative CANDECOMP/PARAPAC (CP) tensor decomposition (NNCPD), where the data tensor is directly decomposed into a minimal sum of outer products of nonnegative vectors, thereby preserving the temporal information. The viability of NNCPD is demonstrated through application to both synthetic and real data, where significantly improved results are obtained compared to those of typical NMF-based methods. The advantages of NNCPD over such approaches are studied and discussed. To the best of our knowledge, this is the first time that NNCPD has been utilized for the purpose of dynamic topic modeling, and our findings will be transformative for both applications and further developments.

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