Machine Learning Framework: Competitive Intelligence and Key Drivers
Identification of Market Share Trends Among Healthcare Facilities
- URL: http://arxiv.org/abs/2212.04810v2
- Date: Mon, 12 Dec 2022 08:15:18 GMT
- Title: Machine Learning Framework: Competitive Intelligence and Key Drivers
Identification of Market Share Trends Among Healthcare Facilities
- Authors: Anudeep Appe, Bhanu Poluparthi, Lakshmi Kasivajjula, Udai Mv, Sobha
Bagadi, Punya Modi, Aditya Singh, Hemanth Gunupudi
- Abstract summary: The US (United States) healthcare business is chosen for the study.
The data spanning across 60 key Facilities in Washington State and about 3 years of historical data is considered.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The necessity of data driven decisions in healthcare strategy formulation is
rapidly increasing. A reliable framework which helps identify factors impacting
a Healthcare Provider Facility or a Hospital (from here on termed as Facility)
Market Share is of key importance. This pilot study aims at developing a data
driven Machine Learning - Regression framework which aids strategists in
formulating key decisions to improve the Facilitys Market Share which in turn
impacts in improving the quality of healthcare services. The US (United States)
healthcare business is chosen for the study; and the data spanning across 60
key Facilities in Washington State and about 3 years of historical data is
considered. In the current analysis Market Share is termed as the ratio of
facility encounters to the total encounters among the group of potential
competitor facilities. The current study proposes a novel two-pronged approach
of competitor identification and regression approach to evaluate and predict
market share, respectively. Leveraged model agnostic technique, SHAP, to
quantify the relative importance of features impacting the market share. The
proposed method to identify pool of competitors in current analysis, develops
Directed Acyclic Graphs (DAGs), feature level word vectors and evaluates the
key connected components at facility level. This technique is robust since its
data driven which minimizes the bias from empirical techniques. Post
identifying the set of competitors among facilities, developed Regression model
to predict the Market share. For relative quantification of features at a
facility level, incorporated SHAP a model agnostic explainer. This helped to
identify and rank the attributes at each facility which impacts the market
share.
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