New drugs and stock market: how to predict pharma market reaction to clinical trial announcements
Semen Budennyy, Alexey Kazakov, Elizaveta Kovtun, Leonid Zhukov

TL;DR
This study develops a multi-model pipeline to predict stock market reactions to pharmaceutical clinical trial announcements, revealing key factors influencing price changes and demonstrating the importance of sentiment and event relationships.
Contribution
Introduces a novel predictive framework combining sentiment analysis, temporal forecasting, and event relationship modeling for pharma stock reactions to clinical trial news.
Findings
Negative announcements cause stronger stock reactions than positive ones.
Small drug portfolios are more susceptible to announcement impacts.
Network effects of related events influence stock price changes.
Abstract
Pharmaceutical companies operate in a strictly regulated and highly risky environment in which a single slip can lead to serious financial implications. Accordingly, the announcements of clinical trial results tend to determine the future course of events, hence being closely monitored by the public. In this work, we provide statistical evidence for the result promulgation influence on the public pharma market value. Whereas most works focus on retrospective impact analysis, the present research aims to predict the numerical values of announcement-induced changes in stock prices. For this purpose, we develop a pipeline that includes a BERT-based model for extracting sentiment polarity of announcements, a Temporal Fusion Transformer for forecasting the expected return, a graph convolution network for capturing event relationships, and gradient boosting for predicting the price change.…
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Taxonomy
Topicsscientometrics and bibliometrics research · Meta-analysis and systematic reviews · Pharmaceutical industry and healthcare
MethodsMulti-Head Attention · Linear Layer · Dense Connections · Absolute Position Encodings · Label Smoothing · Position-Wise Feed-Forward Layer · Adam · Dropout · Layer Normalization · Softmax
