Submitted:
02 August 2025
Posted:
04 August 2025
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Abstract
Keywords:
1. Introduction
2. Backpropagation Algorithm
3. Artificial Intelligence Techniques
3.1. Fuzzy Logic
3.2. Self-Organizing Maps
4. Formulation of the Problem and Simulation of Results for Prediction
4.1. Stock Market Forecast
- Opening Price: The initial transaction price recorded at the start of the trading session.
- Closing Price: The final price at which the stock traded at the end of the session.
- High and Low Prices: The maximum and minimum trading prices recorded within a single day.
- Trading Volume: The total number of shares exchanged during the session.
- Moving Averages (e.g., MA5, MA10): Calculated to smooth out price trends and reveal market momentum.
- Relative Strength Index (RSI): A momentum oscillator used to evaluate overbought or oversold conditions.
- MACD (Moving Average Convergence Divergence): Indicates changes in momentum and trend strength.
- Opening Price: Represents the initial transaction value at the commencement of a trading day.
- Simple Moving Average (SMA): A statistical measure that computes the average of closing prices over a fixed interval to identify directional trends.
- Exponential Moving Average (EMA): Similar to the SMA, but assigns exponentially decreasing weights to older data, emphasizing recent market movements.
- Relative Strength Index (RSI): A bounded oscillator ranging from 0 to 100 that reflects the magnitude and velocity of recent price shifts, aiding in the detection of potential reversal zones.
| Prediction Technique | Mean Square Error (MSE) | Accuracy (%) |
|---|---|---|
| ANN | 1.08 | 97.18 |
| Fuzzy | 5.94 | 92.36 |
| Prediction Technique | Mean Square Error (MSE) | Accuracy (%) |
|---|---|---|
| ANN | 2.43 | 99.68 |
| Fuzzy | 2.64 | 99.04 |
5. Results and Discussion
5.1. Stock Market Prediction Results

5.2. Sales Forecasting Analysis
- Month of the year (1–12)
- Television advertisements
- Radio advertisements
- Newspaper advertisements
- Number of billboards
- Flyers distributed
- Direct mail volume
- Telemarketing calls
- Total promotional expenditure (in dollars)
- Total operator subscriptions
- Operator’s market share
- Gross additions per operator
- Average Minutes of Use (MOU) per operator
- Operator’s annual retention (survival) rate


6. Market Subdivision
i. Data Collection and Preprocessing
- Doctor Specialty – Refers to the physician’s area of medical expertise, such as endocrinology, general medicine, internal medicine, etc.
- Early Adopter Status – Indicates whether the physician typically adopts new medications and medical technologies early or waits until they become widely accepted.
- Physician’s Age – The chronological age of the doctor, which may influence experience, adaptability, and decision-making style.
- Gender – Gender information, which can potentially correlate with communication preferences and clinical behavior.
ii. SOM Training and Visualization
iii. Segmentation Results and Strategic Implications
- Allocate Marketing Resources Efficiently – Resources can be focused on high-potential segments, reducing wasteful spending on less responsive groups.
- Customize Messaging and Campaigns – Each segment can be addressed with communication tailored to their preferences, specialties, and behaviors.
- Improve Conversion Rates – Personalized engagement is more likely to lead to prescriptions of the new medication, thereby increasing overall success.
- Monitor and Evaluate Campaign Impact – Segmentation facilitates performance tracking within each cluster, allowing for more granular assessment of strategy effectiveness.
7. Conclusions
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| Prediction Technique | Mean Square Error (MSE) | Accuracy (%) |
|---|---|---|
| ANN | 0.82 | 93.61 |
| Fuzzy | 0.06 | 97.90 |
| Division No | Number of Physicians |
|---|---|
| Div 1 | 188 |
| Div 2 | 226 |
| Div 3 | 178 |
| Div 4 | 192 |
| Div 5 | 219 |
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