2,505 research outputs found
Neural networks in geophysical applications
Neural networks are increasingly popular in geophysics.
Because they are universal approximators, these
tools can approximate any continuous function with an
arbitrary precision. Hence, they may yield important
contributions to finding solutions to a variety of geophysical applications.
However, knowledge of many methods and techniques
recently developed to increase the performance
and to facilitate the use of neural networks does not seem
to be widespread in the geophysical community. Therefore,
the power of these tools has not yet been explored to
their full extent. In this paper, techniques are described
for faster training, better overall performance, i.e., generalization,and the automatic estimation of network size
and architecture
Predefined Sparseness in Recurrent Sequence Models
Inducing sparseness while training neural networks has been shown to yield
models with a lower memory footprint but similar effectiveness to dense models.
However, sparseness is typically induced starting from a dense model, and thus
this advantage does not hold during training. We propose techniques to enforce
sparseness upfront in recurrent sequence models for NLP applications, to also
benefit training. First, in language modeling, we show how to increase hidden
state sizes in recurrent layers without increasing the number of parameters,
leading to more expressive models. Second, for sequence labeling, we show that
word embeddings with predefined sparseness lead to similar performance as dense
embeddings, at a fraction of the number of trainable parameters.Comment: the SIGNLL Conference on Computational Natural Language Learning
(CoNLL, 2018
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