Stop Filtering: Multi-View Attribute-Enhanced Dialogue Learning
Yiwei Li, Bin Sun, Shaoxiong Feng, Kan Li

TL;DR
This paper introduces a multi-view attribute-enhanced dialogue learning framework that improves conversational models by leveraging diverse sample sets and attribute-specific fine-tuning, avoiding traditional filtering issues.
Contribution
It proposes a novel multi-view enhancement mechanism with sample selection and inter-view fusion, enabling more robust and comprehensive attribute learning without dataset filtering.
Findings
Significant improvement in dialogue attribute enhancement.
Effective multi-view sample selection and fusion.
Robustness against filtering ratio sensitivity.
Abstract
There is a growing interest in improving the conversational ability of models by filtering the raw dialogue corpora. Previous filtering strategies usually rely on a scoring method to assess and discard samples from one perspective, enabling the model to enhance the corresponding dialogue attributes (e.g., consistency) more easily. However, the discarded samples may obtain high scores in other perspectives and can provide regularization effects on the model learning, which causes the performance improvement to be sensitive to the filtering ratio. In this work, we propose a multi-view attribute-enhanced dialogue learning framework that strengthens the attribute-related features more robustly and comprehensively. Instead of filtering the raw dataset to train the model, our framework first pre-trains the model on the raw dataset and then fine-tunes it through adapters on the selected…
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Taxonomy
TopicsTopic Modeling · Speech and dialogue systems · Speech Recognition and Synthesis
