PEMANFAATAN DATA PENJUALAN PRODUK SUSU BAYI PADA E-MARKETPLACE TOKOPEDIA DALAM PENENTUAN HARGA PRODUK DENGAN MENGGUNAKAN FRAMEWORK DYNAMIC PRICING

Adskom is a company that provides services in the form of marketplace insights to infant and toddler formula milk companies selling their products on e-marketplaces such as Tokopedia. Currently, Adskom can obtain sales data from an average of 6.000 infant and toddler formula milk products on Toko...

Full description

Saved in:
Bibliographic Details
Main Author: Adila, Dita
Format: Final Project
Language:Indonesia
Online Access:https://digilib.itb.ac.id/gdl/view/50626
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:50626
spelling id-itb.:506262020-09-24T21:20:34ZPEMANFAATAN DATA PENJUALAN PRODUK SUSU BAYI PADA E-MARKETPLACE TOKOPEDIA DALAM PENENTUAN HARGA PRODUK DENGAN MENGGUNAKAN FRAMEWORK DYNAMIC PRICING Adila, Dita Indonesia Final Project e-marketplace, dynamic pricing, Bayesian inference, bootstrap sampling, kernel regression. INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/50626 Adskom is a company that provides services in the form of marketplace insights to infant and toddler formula milk companies selling their products on e-marketplaces such as Tokopedia. Currently, Adskom can obtain sales data from an average of 6.000 infant and toddler formula milk products on Tokopedia every day within five minutes. This data can be used by Adskom to assist their clients in the pricing process, which is currently being carried out by their clients on a trial-and-error basis and only based on competitor price benchmarks.. Better price management has the potential to increase company profits and revenues. One of the most suitable methods that can be applied in an e-marketplace environment is dynamic pricing. This research adopts the dynamic pricing framework developed by Bauer and Jannach (2018). In general, this framework is based on Bayesian inference combined with bootstrap-based confidence estimation and kernel regression. Specific historical sales data used as inputs to this framework are product name, product price, and the number of product sales. This framework yields an output in the form of the best price by considering competitors’ product prices. The best price for each product is the price that is predicted to achieve a certain profit and revenue targets. The calculation of root mean squared error (RMSE) and ????2 values in kernel regression and regression tree shows that these models have low prediction accuracy and these models cannot explain the variance in the model outputs quite well. This low level of framework performance is due to the limited data points used. Hence, it cannot be guaranteed that the model learning process is sufficient. 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 Adskom is a company that provides services in the form of marketplace insights to infant and toddler formula milk companies selling their products on e-marketplaces such as Tokopedia. Currently, Adskom can obtain sales data from an average of 6.000 infant and toddler formula milk products on Tokopedia every day within five minutes. This data can be used by Adskom to assist their clients in the pricing process, which is currently being carried out by their clients on a trial-and-error basis and only based on competitor price benchmarks.. Better price management has the potential to increase company profits and revenues. One of the most suitable methods that can be applied in an e-marketplace environment is dynamic pricing. This research adopts the dynamic pricing framework developed by Bauer and Jannach (2018). In general, this framework is based on Bayesian inference combined with bootstrap-based confidence estimation and kernel regression. Specific historical sales data used as inputs to this framework are product name, product price, and the number of product sales. This framework yields an output in the form of the best price by considering competitors’ product prices. The best price for each product is the price that is predicted to achieve a certain profit and revenue targets. The calculation of root mean squared error (RMSE) and ????2 values in kernel regression and regression tree shows that these models have low prediction accuracy and these models cannot explain the variance in the model outputs quite well. This low level of framework performance is due to the limited data points used. Hence, it cannot be guaranteed that the model learning process is sufficient.
format Final Project
author Adila, Dita
spellingShingle Adila, Dita
PEMANFAATAN DATA PENJUALAN PRODUK SUSU BAYI PADA E-MARKETPLACE TOKOPEDIA DALAM PENENTUAN HARGA PRODUK DENGAN MENGGUNAKAN FRAMEWORK DYNAMIC PRICING
author_facet Adila, Dita
author_sort Adila, Dita
title PEMANFAATAN DATA PENJUALAN PRODUK SUSU BAYI PADA E-MARKETPLACE TOKOPEDIA DALAM PENENTUAN HARGA PRODUK DENGAN MENGGUNAKAN FRAMEWORK DYNAMIC PRICING
title_short PEMANFAATAN DATA PENJUALAN PRODUK SUSU BAYI PADA E-MARKETPLACE TOKOPEDIA DALAM PENENTUAN HARGA PRODUK DENGAN MENGGUNAKAN FRAMEWORK DYNAMIC PRICING
title_full PEMANFAATAN DATA PENJUALAN PRODUK SUSU BAYI PADA E-MARKETPLACE TOKOPEDIA DALAM PENENTUAN HARGA PRODUK DENGAN MENGGUNAKAN FRAMEWORK DYNAMIC PRICING
title_fullStr PEMANFAATAN DATA PENJUALAN PRODUK SUSU BAYI PADA E-MARKETPLACE TOKOPEDIA DALAM PENENTUAN HARGA PRODUK DENGAN MENGGUNAKAN FRAMEWORK DYNAMIC PRICING
title_full_unstemmed PEMANFAATAN DATA PENJUALAN PRODUK SUSU BAYI PADA E-MARKETPLACE TOKOPEDIA DALAM PENENTUAN HARGA PRODUK DENGAN MENGGUNAKAN FRAMEWORK DYNAMIC PRICING
title_sort pemanfaatan data penjualan produk susu bayi pada e-marketplace tokopedia dalam penentuan harga produk dengan menggunakan framework dynamic pricing
url https://digilib.itb.ac.id/gdl/view/50626
_version_ 1822928504292900864