Towards Structured Prediction in Bioinformatics with Deep Learning
Yu Li

TL;DR
This paper explores how deep learning combined with traditional algorithms and tailored architectures can effectively address complex structured prediction tasks in bioinformatics, achieving state-of-the-art results across diverse applications.
Contribution
It introduces a framework integrating deep learning with classic models and problem-specific designs for structured prediction in bioinformatics, demonstrating broad applicability and superior performance.
Findings
Achieved SOTA results on multiple bioinformatics structured prediction tasks.
Demonstrated effectiveness across diverse data types and problem settings.
Extended methods to health-care applications for future impact.
Abstract
Using machine learning, especially deep learning, to facilitate biological research is a fascinating research direction. However, in addition to the standard classification or regression problems, in bioinformatics, we often need to predict more complex structured targets, such as 2D images and 3D molecular structures. The above complex prediction tasks are referred to as structured prediction. Structured prediction is more complicated than the traditional classification but has much broader applications, considering that most of the original bioinformatics problems have complex output objects. Due to the properties of those structured prediction problems, such as having problem-specific constraints and dependency within the labeling space, the straightforward application of existing deep learning models can lead to unsatisfactory results. Here, we argue that the following ideas can…
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Taxonomy
TopicsMachine Learning in Bioinformatics · Genetics, Bioinformatics, and Biomedical Research · Bioinformatics and Genomic Networks
