A Weak Supervision Approach for Few-Shot Aspect Based Sentiment Analysis
Robert Vacareanu, Siddharth Varia, Kishaloy Halder, Shuai Wang, Giovanni Paolini, Neha Anna John, Miguel Ballesteros, Smaranda Muresan
Main: Opinion, Sentiment and Emotion Oral Paper
Session 4: Opinion, Sentiment and Emotion (Oral)
Conference Room: Marie Louise 2
Conference Time: March 18, 16:00-17:30 (CET) (Europe/Malta)
TLDR:
You can open the
#paper-427-Oral
channel in a separate window.
Abstract:
We explore how weak supervision on abundant unlabeled data can be leveraged to improve few-shot performance in aspect-based sentiment analysis (ABSA) tasks. We propose a pipeline approach to construct a noisy ABSA dataset, and we use it to adapt a pre-trained sequence-to-sequence model to the ABSA tasks. We test the resulting model on three widely used ABSA datasets, before and after fine-tuning. Our proposed method preserves the full fine-tuning performance while showing significant improvements (15.84 absolute F1) in the few-shot learning scenario for the harder tasks. In zero-shot (i.e., without fine-tuning), our method outperforms the previous state of the art on the aspect extraction sentiment classification (AESC) task and is, additionally, capable of performing the harder aspect sentiment triplet extraction (ASTE) task.