High Quality Prediction of Protein Q8 Secondary Structure by Diverse Neural Network Architectures
We tackle the problem of protein secondary structure prediction using a common task framework. This lead to the introduction of multiple ideas for neural architectures based on state of the art building blocks, used in this task for the first time. We take a principled machine learning approach, whi...
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Zusammenfassung: | We tackle the problem of protein secondary structure prediction using a
common task framework. This lead to the introduction of multiple ideas for
neural architectures based on state of the art building blocks, used in this
task for the first time. We take a principled machine learning approach, which
provides genuine, unbiased performance measures, correcting longstanding errors
in the application domain. We focus on the Q8 resolution of secondary
structure, an active area for continuously improving methods. We use an
ensemble of strong predictors to achieve accuracy of 70.7% (on the CB513 test
set using the CB6133filtered training set). These results are statistically
indistinguishable from those of the top existing predictors. In the spirit of
reproducible research we make our data, models and code available, aiming to
set a gold standard for purity of training and testing sets. Such good
practices lower entry barriers to this domain and facilitate reproducible,
extendable research. |
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DOI: | 10.48550/arxiv.1811.07143 |