Authors
Andor Diera, Nicolas Lell, Aygul Garifullina, Ansgar Scherp
Publication date
2023/8/22
Book
International Cross-Domain Conference for Machine Learning and Knowledge Extraction
Pages
258-279
Publisher
Springer Nature Switzerland
Description
Privacy preserving deep learning is an emerging field in machine learning that aims to mitigate the privacy risks in the use of deep neural networks. One such risk is training data extraction from language models that have been trained on datasets, which contain personal and privacy sensitive information. In our study, we investigate the extent of named entity memorization in fine-tuned BERT models. We use single-label text classification as representative downstream task and employ three different fine-tuning setups in our experiments, including one with Differentially Privacy (DP). We create a large number of text samples from the fine-tuned BERT models utilizing a custom sequential sampling strategy with two prompting strategies. We search in these samples for named entities and check if they are also present in the fine-tuning datasets. We experiment with two benchmark datasets in the domains of emails and …
Scholar articles
A Diera, N Lell, A Garifullina, A Scherp - International Cross-Domain Conference for Machine …, 2023