logistic lda
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Discriminative Topic Modeling with Logistic LDA
Despite many years of research into latent Dirichlet allocation (LDA), applying LDA to collections of non-categorical items is still challenging for practitioners. Yet many problems with much richer data share a similar structure and could benefit from the vast literature on LDA. We propose logistic LDA, a novel discriminative variant of latent Dirichlet allocation which is easy to apply to arbitrary inputs. In particular, our model can easily be applied to groups of images, arbitrary text embeddings, or integrate deep neural networks. Although it is a discriminative model, we show that logistic LDA can learn from unlabeled data in an unsupervised manner by exploiting the group structure present in the data. In contrast to other recent topic models designed to handle arbitrary inputs, our model does not sacrifice the interpretability and principled motivation of LDA.
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Reviews: Discriminative Topic Modeling with Logistic LDA
ORIGINALITY The idea of having a discriminative version of LDA, analogous to logistic regression, is interesting. This idea is carried out quite well with the logistic LDA, its inference algorithm, and classification results using various datasets. QUALITY One concern I have is with comparisons with supervised LDA models, such as sLDA, discLDA, or LLDA. I realize these are mentioned in the beginning of the paper, and authors may have felt they are not as relevant, as they are not discriminative models, but I feel that readers would natural wonder about this, and authors should compare them, not necessarily empirically (thought that would be helpful). Another question I had was about topics being coherent.
Discriminative Topic Modeling with Logistic LDA
Despite many years of research into latent Dirichlet allocation (LDA), applying LDA to collections of non-categorical items is still challenging for practitioners. Yet many problems with much richer data share a similar structure and could benefit from the vast literature on LDA. We propose logistic LDA, a novel discriminative variant of latent Dirichlet allocation which is easy to apply to arbitrary inputs. In particular, our model can easily be applied to groups of images, arbitrary text embeddings, or integrate deep neural networks. Although it is a discriminative model, we show that logistic LDA can learn from unlabeled data in an unsupervised manner by exploiting the group structure present in the data. In contrast to other recent topic models designed to handle arbitrary inputs, our model does not sacrifice the interpretability and principled motivation of LDA.
Discriminative Topic Modeling with Logistic LDA
Korshunova, Iryna, Xiong, Hanchen, Fedoryszak, Mateusz, Theis, Lucas
Despite many years of research into latent Dirichlet allocation (LDA), applying LDA to collections of non-categorical items is still challenging for practitioners. Yet many problems with much richer data share a similar structure and could benefit from the vast literature on LDA. We propose logistic LDA, a novel discriminative variant of latent Dirichlet allocation which is easy to apply to arbitrary inputs. In particular, our model can easily be applied to groups of images, arbitrary text embeddings, or integrate deep neural networks. Although it is a discriminative model, we show that logistic LDA can learn from unlabeled data in an unsupervised manner by exploiting the group structure present in the data.
Discriminative Topic Modeling with Logistic LDA
Korshunova, Iryna, Xiong, Hanchen, Fedoryszak, Mateusz, Theis, Lucas
Despite many years of research into latent Dirichlet allocation (LDA), applying LDA to collections of non-categorical items is still challenging. Yet many problems with much richer data share a similar structure and could benefit from the vast literature on LDA. We propose logistic LDA, a novel discriminative variant of latent Dirichlet allocation which is easy to apply to arbitrary inputs. In particular, our model can easily be applied to groups of images, arbitrary text embeddings, and integrate well with deep neural networks. Although it is a discriminative model, we show that logistic LDA can learn from unlabeled data in an unsupervised manner by exploiting the group structure present in the data. In contrast to other recent topic models designed to handle arbitrary inputs, our model does not sacrifice the interpretability and principled motivation of LDA.
- Asia > Middle East > Jordan (0.05)
- North America > Canada (0.04)
- Europe > Portugal > Lisbon > Lisbon (0.04)