Can pre-trained Transformers be used in detecting complex sensitive sentences? – A Monsanto case study

03/14/2022
by   Roelien C. Timmer, et al.
0

Each and every organisation releases information in a variety of forms ranging from annual reports to legal proceedings. Such documents may contain sensitive information and releasing them openly may lead to the leakage of confidential information. Detection of sentences that contain sensitive information in documents can help organisations prevent the leakage of valuable confidential information. This is especially challenging when such sentences contain a substantial amount of information or are paraphrased versions of known sensitive content. Current approaches to sensitive information detection in such complex settings are based on keyword-based approaches or standard machine learning models. In this paper, we wish to explore whether pre-trained transformer models are well suited to detect complex sensitive information. Pre-trained transformers are typically trained on an enormous amount of text and therefore readily learn grammar, structure and other linguistic features, making them particularly attractive for this task. Through our experiments on the Monsanto trial data set, we observe that the fine-tuned Bidirectional Encoder Representations from Transformers (BERT) transformer model performs better than traditional models. We experimented with four different categories of documents in the Monsanto dataset and observed that BERT achieves better F2 scores by 24.13% to 65.79% for GHOST, 30.14% to 54.88% for TOXIC, 39.22% for CHEMI, 53.57% for REGUL compared to existing sensitive information detection models.

READ FULL TEXT

page 1

page 7

research
05/14/2021

Classifying Long Clinical Documents with Pre-trained Transformers

Automatic phenotyping is a task of identifying cohorts of patients that ...
research
11/15/2021

Improving Prosody for Unseen Texts in Speech Synthesis by Utilizing Linguistic Information and Noisy Data

Recent advancements in end-to-end speech synthesis have made it possible...
research
08/25/2020

Sensitive Information Detection: Recursive Neural Networks for Encoding Context

The amount of data for processing and categorization grows at an ever in...
research
05/02/2023

Cancer Hallmark Classification Using Bidirectional Encoder Representations From Transformers

This paper presents a novel approach to accurately classify the hallmark...
research
06/14/2022

FETILDA: An Effective Framework For Fin-tuned Embeddings For Long Financial Text Documents

Unstructured data, especially text, continues to grow rapidly in various...
research
04/05/2022

How Different are Pre-trained Transformers for Text Ranking?

In recent years, large pre-trained transformers have led to substantial ...
research
05/29/2020

Stance Prediction for Contemporary Issues: Data and Experiments

We investigate whether pre-trained bidirectional transformers with senti...

Please sign up or login with your details

Forgot password? Click here to reset