An Exploratory Data Analysis (EDA) Approach for Analyzing Financial Statements in Pharmaceutical Companies Using Machine Learning

Journal Title: International Journal of Current Science Research and Review - Year 2024, Vol 7, Issue 07

Abstract

This research investigates the use of Exploratory Data Analysis (EDA) and machine learning techniques to analyze financial statements (FSs) of pharmaceutical companies. The study focuses on three major Indonesian pharmaceutical companies: Kimia Farma, Kalbe Farma, and IndoFarma. By leveraging EDA, this study aims to uncover hidden patterns and insights within financial data, such as earnings per share (EPS), return on capital employed (ROCE), net profit margin, and inventory turnover ratio. Additionally, the study employs machine learning models, including Linear Regression, K-Nearest Neighbor (KNN), Support Vector Machine (SVM), and Decision Tree, to predict financial performance metrics and trends. The performance of these models is evaluated using metrics such as Root Mean Squared Error (RMSE), Mean Squared Error (MSE), Mean Absolute Error (MAE), and Mean Absolute Percentage Error (MAPE). Among the models tested, the Decision Tree model demonstrated the highest performance, indicating high accuracy and a strong fit to the data. These results highlight the potential of data-driven approaches in improving the operational efficiency and financial stability of healthcare organizations.

Authors and Affiliations

Cahya Mega Panji Santosa, Erman Sumirat, Oktofa Yudha Sudrajad,

Keywords

Related Articles

Analysis of the Effect of Investor Sentiment, Liquidity, Solvency, and Economic Value Added (EVA) on Stock Returns with Corporate Social Responsibility (CSR) as a Moderating Variable in Health Sector Companies (Healthcare) Listed on the Indonesia Stock Exchange (IDX) Period 2018 -2022

The purpose of this study was to analyze how the influence of investor sentiment, liquidity, solvency, and economic value added can affect stock returns with moderation by corporate social responsibility disclosure in he...

Scenario Planning for Indonesia’s Alcoholic Beverage Industry in 2026: A Study Case from Company DORIA

Indonesia has a small market for the alcoholic beverage industry due to its majority Muslim population. However, some data projected that the alcoholic beverage consumption level in the country will continue to grow unti...

Quality Improvement for Sleeve Shirt X Using Lean Six Sigma Approach at PT X

PT X, a key player in the garment industry, faces operational challenges, including inefficient motion in packing and product defects. Current state analysis reveals a lead time of 3,424.90 seconds, with a value-added ti...

Laboratory Study of Analysis of the Effect of ABS Surfactant Injection on Increasing Oil Recovery

The decline in oil recovery in oil and gas fields is a problem that must be faced now and in the future along with the increasing need for petroleum energy. Increasing oil recovery reserves requires an advanced method, n...

Transformation of Jember Regency, East Java, Indonesia to Become as a MICE Industry in Collaboration with Among Natural and Cultural Advantages

One of the sectors in tourism that is currently the main focus is Meeting, Incentive, Conference, Exhibition (MICE). MICE relates to the organization of business meetings, incentive programs organized by companies, large...

Download PDF file
  • EP ID EP739957
  • DOI 10.47191/ijcsrr/V7-i7-12
  • Views 45
  • Downloads 0

How To Cite

Cahya Mega Panji Santosa, Erman Sumirat, Oktofa Yudha Sudrajad, (2024). An Exploratory Data Analysis (EDA) Approach for Analyzing Financial Statements in Pharmaceutical Companies Using Machine Learning. International Journal of Current Science Research and Review, 7(07), -. https://europub.co.uk/articles/-A-739957