Demystifying the trend of the healthcare index: Is historical price a key driver?
Payel Sadhukhan, Samrat Gupta, Subhasis Ghosh, Tanujit Chakraborty

TL;DR
This study develops a machine learning framework using novel nowcasting features from historical healthcare index data to accurately predict daily market movements, aiding stability and transparency in the healthcare sector.
Contribution
Introduces a new set of nowcasting features derived from OHLC ratios and demonstrates their effectiveness in short-term healthcare index prediction across different markets.
Findings
Predictive accuracy exceeds 80%
Nowcasting features are the most influential predictors
Model performs robustly across different economic phases
Abstract
Healthcare sector indices consolidate the economic health of pharmaceutical, biotechnology, and healthcare service firms. The short-term movements in these indices are closely intertwined with capital allocation decisions affecting research and development investment, drug availability, and long-term health outcomes. This research investigates whether historical open-high-low-close (OHLC) index data contain sufficient information for predicting the directional movement of the opening index on the subsequent trading day. The problem is formulated as a supervised classification task involving a one-step-ahead rolling window. A diverse feature set is constructed, comprising original prices, volatility-based technical indicators, and a novel class of nowcasting features derived from mutual OHLC ratios. The framework is evaluated on data from healthcare indices in the U.S. and Indian markets…
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Taxonomy
TopicsGlobal Health Care Issues · Healthcare Policy and Management · Financial Risk and Volatility Modeling
