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RAF-Ready SciSciNet

This repository provides the processed SciSciNet dataset used in the paper:

Retrieval-Augmented Dataset Assembly for Fair Clustering

The data are prepared for evaluating RAF, a retrieval-augmented dataset assembly framework for downstream fair clustering. RAF studies a data-level solution to fair clustering: instead of only imposing fairness constraints on a fixed dataset, it retrieves and selects real external samples to reduce minority under-representation before clustering.

This release contains the RAF-ready processed version of SciSciNet, including the query dataset, external source files, source metadata, embeddings, and sensitive-group labels required to run RAF.

This repository does not redistribute the full original SciSciNet-v2 data lake. It only provides the processed files used for RAF experiments. Users should also comply with the license and terms of the original SciSciNet-v2 dataset.

Dataset Description

Background

Fair clustering aims to produce clustering results that are both useful and fair with respect to sensitive groups. However, when the original dataset severely under-represents a minority group in some semantic regions, fair clustering algorithms are limited by the available data. They can rebalance assignments, but they cannot create missing real samples.

RAF addresses this limitation from the data side. Given an initial query dataset and a collection of external data sources, RAF selectively retrieves candidate samples under a budget constraint. It then evaluates whether each candidate improves majority-minority distributional alignment in the embedding space. The accepted samples are used to augment the initial dataset before downstream clustering.

This processed SciSciNet release is designed to support this setting.

Source Dataset

The original dataset is based on SciSciNet-v2, a large-scale science-of-science dataset containing scholarly publication metadata.

Original dataset:

Processed Dataset

This repository contains the processed RAF-ready SciSciNet files:

  • Query dataset used as the initial dataset D_q
  • External source files used as candidate data sources
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