DECIDER introduces a rule-controllable decoding strategy for language generation inspired by dual-system cognitive theory. It focuses on guiding the generation process towards specific targets in a more human-like manner, balancing text quality and target satisfaction. The method aims to follow high-level rules to approach the target rather than focusing solely on the target itself.
Existing approaches often lack high-level reasoning, leading to quick task satisfaction but at the cost of overall planning and commonsense reasoning. DECIDER addresses this issue by incorporating logical reasoners and explicit modeling of decision-making processes based on dual-system cognitive theory. By introducing rules that guide pre-trained generative models, DECIDER demonstrates improved performance in balancing text quality and target satisfaction during inference.
The framework consists of three modules: a base pre-trained language model (PLM) for text generation, a logical reasoner for rule interpretation, and a decision function to combine results from both systems. Through extensive experimental results, DECIDER showcases its effectiveness in following given rules to generate higher-quality and target-meeting text across various tasks.
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arxiv.org
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