Combining Probabilistic Logic and Deep Learning for Self-Supervised Learning
Hoifung Poon, Hai Wang, Hunter Lang

TL;DR
This paper introduces a framework combining probabilistic logic with deep learning for task-specific self-supervised learning, enabling automatic annotation and iterative self-supervision to improve performance with minimal human effort.
Contribution
It presents deep probabilistic logic (DPL) and self-supervised self-supervision (S4), novel methods for leveraging domain knowledge and automatic self-supervision in deep learning.
Findings
Effective in biomedical machine reading
Achieves comparable accuracy to supervised methods
Reduces human annotation effort significantly
Abstract
Deep learning has proven effective for various application tasks, but its applicability is limited by the reliance on annotated examples. Self-supervised learning has emerged as a promising direction to alleviate the supervision bottleneck, but existing work focuses on leveraging co-occurrences in unlabeled data for task-agnostic representation learning, as exemplified by masked language model pretraining. In this chapter, we explore task-specific self-supervision, which leverages domain knowledge to automatically annotate noisy training examples for end applications, either by introducing labeling functions for annotating individual instances, or by imposing constraints over interdependent label decisions. We first present deep probabilistic logic(DPL), which offers a unifying framework for task-specific self-supervision by composing probabilistic logic with deep learning. DPL…
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Taxonomy
TopicsTopic Modeling · Time Series Analysis and Forecasting · Bayesian Modeling and Causal Inference
