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Splinter Base Qass

Developed by tau
Splinter is a few-shot QA model pre-trained via self-supervised learning, utilizing the Recurrent Span Selection (RSS) objective to simulate the span selection process in extractive QA.
Downloads 3,048
Release Time : 3/2/2022

Model Overview

Splinter is a pre-trained few-shot extractive QA model trained in a self-supervised manner on Wikipedia and BookCorpus, particularly suitable for QA tasks in few-shot scenarios.

Model Features

Recurrent Span Selection (RSS) Pre-training
Self-supervised pre-training by simulating the span selection process in QA, eliminating the need for manually annotated data.
Question-Aware Span Selection (QASS) Layer
Specially designed layer structure that selects optimal spans based on specific questions, supporting multiple predictions.
Few-shot Learning Capability
Optimized specifically for QA tasks in few-shot scenarios, reducing reliance on large amounts of annotated data.

Model Capabilities

Extractive QA
Text Span Selection
Few-shot Learning

Use Cases

QA Systems
Few-shot QA Application
Building QA systems in scenarios with limited annotated data
Significantly reduces required annotated data volume compared to traditional methods
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