Log-Linear RNNs: Towards Recurrent Neural Networks with Flexible Prior Knowledge
We introduce LL-RNNs (Log-Linear RNNs), an extension of Recurrent Neural Networks that replaces the softmax output layer by a log-linear output layer, of which the softmax is a special case. This conceptually simple move has two main advantages. First, it allows the learner to combat training data s...
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Zusammenfassung: | We introduce LL-RNNs (Log-Linear RNNs), an extension of Recurrent Neural
Networks that replaces the softmax output layer by a log-linear output layer,
of which the softmax is a special case. This conceptually simple move has two
main advantages. First, it allows the learner to combat training data sparsity
by allowing it to model words (or more generally, output symbols) as complex
combinations of attributes without requiring that each combination is directly
observed in the training data (as the softmax does). Second, it permits the
inclusion of flexible prior knowledge in the form of a priori specified modular
features, where the neural network component learns to dynamically control the
weights of a log-linear distribution exploiting these features.
We conduct experiments in the domain of language modelling of French, that
exploit morphological prior knowledge and show an important decrease in
perplexity relative to a baseline RNN.
We provide other motivating iillustrations, and finally argue that the
log-linear and the neural-network components contribute complementary strengths
to the LL-RNN: the LL aspect allows the model to incorporate rich prior
knowledge, while the NN aspect, according to the "representation learning"
paradigm, allows the model to discover novel combination of characteristics. |
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DOI: | 10.48550/arxiv.1607.02467 |