PharmKE: Knowledge Extraction Platform for Pharmaceutical Texts using Transfer Learning
Nasi Jofche, Kostadin Mishev, Riste Stojanov, Milos Jovanovik, Dimitar, Trajanov

TL;DR
PharmKE is a platform that uses transfer learning and deep learning to extract and analyze pharmaceutical entities from texts, creating labeled datasets and expanding knowledge graphs for domain-specific applications.
Contribution
The paper introduces PharmKE, a novel platform that combines transfer learning, dataset creation methodology, and semantic analysis for pharmaceutical text processing.
Findings
Achieved high accuracy in pharmaceutical entity recognition
Compared results with fine-tuned BERT and BioBERT models
Enhanced knowledge graph expansion for pharmaceutical texts
Abstract
The challenge of recognizing named entities in a given text has been a very dynamic field in recent years. This is due to the advances in neural network architectures, increase of computing power and the availability of diverse labeled datasets, which deliver pre-trained, highly accurate models. These tasks are generally focused on tagging common entities, but domain-specific use-cases require tagging custom entities which are not part of the pre-trained models. This can be solved by either fine-tuning the pre-trained models, or by training custom models. The main challenge lies in obtaining reliable labeled training and test datasets, and manual labeling would be a highly tedious task. In this paper we present PharmKE, a text analysis platform focused on the pharmaceutical domain, which applies deep learning through several stages for thorough semantic analysis of pharmaceutical…
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Taxonomy
TopicsBiomedical Text Mining and Ontologies
MethodsLinear Layer · Dropout · Linear Warmup With Linear Decay · Weight Decay · Refunds@Expedia|||How do I get a full refund from Expedia? · Softmax · Multi-Head Attention · Adam · Dense Connections · Attention Is All You Need
