DESCRIPTIVE AND PREDICTIVE ANALYSIS OF MAIL ORDER PHARMACY

<p align="justify">Mail Order Pharmacy (MOP), which is part of online pharmacies that have been implemented in the Americas and Europe. The service initially operates for veteran populations to avoid having to go to a health service center for treatment. MOP has many benefits for con...

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Main Author: YOZA PUTRA (NIM : 23516005), HAFID
Format: Theses
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/27631
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:27631
spelling id-itb.:276312018-03-15T15:46:00ZDESCRIPTIVE AND PREDICTIVE ANALYSIS OF MAIL ORDER PHARMACY YOZA PUTRA (NIM : 23516005), HAFID Indonesia Theses INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/27631 <p align="justify">Mail Order Pharmacy (MOP), which is part of online pharmacies that have been implemented in the Americas and Europe. The service initially operates for veteran populations to avoid having to go to a health service center for treatment. MOP has many benefits for consumers including free shipping, 24-hour availability and <br /> <br /> availability of drug stock. In Indonesia there are two services that point to MOP. These services are Mocehat and Halodoc. Data on drug sales transactions in one of the European countries can be described and predict revenue as one of the recommendations of decision-making. <br /> <br /> The transaction data needs to go through the preprocessing stage in order to proceed to the next stage. Description of the business condition of MOP can be done by using data mart and data visualization. Predicted revenue begins with feature selection steps such as correlation and feature deletion. Prediction is done with data mining which consists of two stages: order classification and sale_quantity regression. Classification uses the Naive Bayes method, Multi Layer Perceptron Neural Network and Support Vector Machine. Regression using Multi Layer <br /> <br /> Perceptron Neural Network method. The method is used to build the best model for prediction. The performance measurement of the classification model uses FMeasure <br /> <br /> and regression model using Root Mean Square Error (RMSE). <br /> <br /> The results of data visualization provide information about MOP business condition including the number of non-generic drug sales more than generic drugs. Features <br /> <br /> derived from feature deletion ie rrp, price, competitorprice and pid produce the best classification model. Features gleaned from all features produce the best regression model. The best performance of the classification model test results has F-Measure 0.462 and the regression model has RMSE 1.6654. The predicted results from both models are used for revenue prediction.<p align="justify"> text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
description <p align="justify">Mail Order Pharmacy (MOP), which is part of online pharmacies that have been implemented in the Americas and Europe. The service initially operates for veteran populations to avoid having to go to a health service center for treatment. MOP has many benefits for consumers including free shipping, 24-hour availability and <br /> <br /> availability of drug stock. In Indonesia there are two services that point to MOP. These services are Mocehat and Halodoc. Data on drug sales transactions in one of the European countries can be described and predict revenue as one of the recommendations of decision-making. <br /> <br /> The transaction data needs to go through the preprocessing stage in order to proceed to the next stage. Description of the business condition of MOP can be done by using data mart and data visualization. Predicted revenue begins with feature selection steps such as correlation and feature deletion. Prediction is done with data mining which consists of two stages: order classification and sale_quantity regression. Classification uses the Naive Bayes method, Multi Layer Perceptron Neural Network and Support Vector Machine. Regression using Multi Layer <br /> <br /> Perceptron Neural Network method. The method is used to build the best model for prediction. The performance measurement of the classification model uses FMeasure <br /> <br /> and regression model using Root Mean Square Error (RMSE). <br /> <br /> The results of data visualization provide information about MOP business condition including the number of non-generic drug sales more than generic drugs. Features <br /> <br /> derived from feature deletion ie rrp, price, competitorprice and pid produce the best classification model. Features gleaned from all features produce the best regression model. The best performance of the classification model test results has F-Measure 0.462 and the regression model has RMSE 1.6654. The predicted results from both models are used for revenue prediction.<p align="justify">
format Theses
author YOZA PUTRA (NIM : 23516005), HAFID
spellingShingle YOZA PUTRA (NIM : 23516005), HAFID
DESCRIPTIVE AND PREDICTIVE ANALYSIS OF MAIL ORDER PHARMACY
author_facet YOZA PUTRA (NIM : 23516005), HAFID
author_sort YOZA PUTRA (NIM : 23516005), HAFID
title DESCRIPTIVE AND PREDICTIVE ANALYSIS OF MAIL ORDER PHARMACY
title_short DESCRIPTIVE AND PREDICTIVE ANALYSIS OF MAIL ORDER PHARMACY
title_full DESCRIPTIVE AND PREDICTIVE ANALYSIS OF MAIL ORDER PHARMACY
title_fullStr DESCRIPTIVE AND PREDICTIVE ANALYSIS OF MAIL ORDER PHARMACY
title_full_unstemmed DESCRIPTIVE AND PREDICTIVE ANALYSIS OF MAIL ORDER PHARMACY
title_sort descriptive and predictive analysis of mail order pharmacy
url https://digilib.itb.ac.id/gdl/view/27631
_version_ 1822021404690743296