Market basket analysis – a data mining application in Indian retailing

2012 ◽  
Vol 10 (1) ◽  
pp. 109 ◽  
Author(s):  
M. Hemalatha
Author(s):  
Zahedi Zahedi ◽  
Charies Chandra

Any difficulty in analyzing sales transaction data is often faced by a company due to the huge number of sales transactions and the limited tools to process the data. It results in losses for the company since it is difficult to estimate the goods supply for subsequent sales. In this paper a data mining application is designed to analyze sales data. Market Basket Analysis is a data mining application that aims to determine most purchased or used products at once by the consumer. The process of Market Basket Analysis is to analyze consumer buying habits by finding associations among products purchased by different customers. The method used in Market Basket Analysis is a method of Fuzzy c-Covering, which is one method to classify the elements of a universal set into partitions of fuzzy sets. This study found that the value of support and confidence is part of the Market Basket Analysis, computed using the Fuzzy c-Covering. The higher the limit, the more selected the analytical results obtained are.


ICIT Journal ◽  
2020 ◽  
Vol 6 (1) ◽  
pp. 94-104
Author(s):  
Fernando Siboro ◽  
Capri Eriansyah ◽  
Muhammad Adi Sofyan

Teknologi informasi saat ini terus berkembang semakin cepat, membuat pola berfikir manusia berubah, dengan proses pertumbuhan yang seperti ini, generasi akan datang diharuskan mempunyai keahlian yang lebih baik di bidang pemanfaatan teknologi informasi. Kebutuhan adanya kemudahan dari segi pemasaran, saat ini dirasa sangat penting, terutama bagi perusahaan yang bergerak dibidang penjulan atau distributor guna menunjang meningkatkan akurasi dan kualitas pemasaran itu sendiri. Namun pada kenyataanya, sistem yang berjalan masih tergolong kurang efektif dan efesien dalam melayani kebutuhan pelanggan, hal ini dikarenakan sistem pemasaran produk hanya bisa diakses secara manual, dan belum adanya media informasi seputar produk yang ditawarkan, oleh sebab itu dibuatlah suatu perancangan sistem informasi yang mengatur pemasaran produk dan dapat menjadi bahan dalam pembuatan laporan sistem penunjang keputusan. Dalam perancangan ini menggunakan metode data mining market basket analysis dan Max-Miner sebagai algoritma. Serta menggunakan metode penerapan sistem waterfall atau sering dinamakan siklus hidup klasik (classic life cycle). Dengan demikian rancang bangun sistem informasi ini, mengacu kepada bagaimana cara agar pemasaran produk dapat di akses dengan mudah, cepat, dan akurat dimanapun dan kapanpun, calon customer dapat mengakses tanpa terkendala waktu dan tempat, serta menjadi wadah dalam pengambilan keputusan oleh perusahaan. Metodologi desain menggunakan uml yang melimuti usecase, activity, squence dan untuk pengelolaan basis data menggunakan mysql. Sistem ini diharapkan mampu dijadikan salah satu penunjang keputusan untuk kebutuhan promosi produk. Kata Kunci: Penunjang pemasaran, promosi produk, algoritma Max-Miner


2011 ◽  
Vol 145 ◽  
pp. 292-296
Author(s):  
Lee Wen Huang

Data Mining means a process of nontrivial extraction of implicit, previously and potentially useful information from data in databases. Mining closed large itemsets is a further work of mining association rules, which aims to find the set of necessary subsets of large itemsets that could be representative of all large itemsets. In this paper, we design a hybrid approach, considering the character of data, to mine the closed large itemsets efficiently. Two features of market basket analysis are considered – the number of items is large; the number of associated items for each item is small. Combining the cut-point method and the hash concept, the new algorithm can find the closed large itemsets efficiently. The simulation results show that the new algorithm outperforms the FP-CLOSE algorithm in the execution time and the space of storage.


2021 ◽  
Vol 3 (2) ◽  
pp. 0210206
Author(s):  
Kelik Sussolaikah

Data mining is one of the fields of science in the world of informatics which has an important role, especially with regard to data. There are many algorithms and methods that can be used to process data. The paper this time the author tries to conduct research on consumer behavior by using one of the data mining techniques, namely market basket analysis. This research uses the R Programming tool, where it is hoped that the research can be carried out effectively and efficiently. Based on the research conducted, it is known that there has been a significant purchase of several items that have been described as a plot. The tendency of consumers to buy several items followed by other items can be a consideration for arranging the layout of goods on the sales shelf or arranging product stock in a supermarket.


Author(s):  
Marcus A. Maloof

Traditional approaches to data mining are based on an assumption that the process that generated or is generating a data stream is static. Although this assumption holds for many applications, it does not hold for many others. Consider systems that build models for identifying important e-mail. Through interaction with and feedback from a user, such a system might determine that particular e-mail addresses and certain words of the subject are useful for predicting the importance of e-mail. However, when the user or the persons sending e-mail start other projects or take on additional responsibilities, what constitutes important e-mail will change. That is, the concept of important e-mail will change or drift. Such a system must be able to adapt its model or concept description in response to this change. Coping with or tracking concept drift is important for other applications, such as market-basket analysis, intrusion detection, and intelligent user interfaces, to name a few.


Author(s):  
Eferoni Ndruru ◽  
Taronisokhi Zebua

Stenography and security are one of the techniques to develop art in securing data. Stenography has the most important aspect is the level of security in data hiding, which makes the third party unable to detect some information that has been secured. Usually used to hide textinformationThe (LSB) algorithm is one of the basic algorithms proposed by Arawak and Giant in 1994 to determine the frequent item set for Boolean association rules. A priory algorithm includes the type of association rules in data mining. The rule that states associations between attributes are often called affinity analysis or market basket analysis. OTP can be widely used in business. With the knowledge of text message, concealment techniques will make it easier for companies to know the number of frequencies of sales data, making it easier for companies to take an appropriate transaction action. The results of this study, hide the text message on the image (image) by using a combination of LSB and Otp methods.


2018 ◽  
Vol 2 (2) ◽  
pp. 472-478
Author(s):  
Erlin Elisa

Data mining merupakan teknik untuk menggali informasi baru dari gudang data, informasi dipandang sangat penting dan berharga karena dengan menguasai informasi maka dengan mudah untuk mencapai sebuah tujuan, hal ini membuat setiap orang berlomba untuk memperoleh informasi, demikian juga pada usaha perdagangan seperti minimarket Ayu di Kota Batam. Minimarket ini berlokasi dekat dengan rumah penduduk, hal ini tentunya mempengaruhi tingkat penjualan, dengan adanya kegiatan penjualan setiap hari, data transaksi penjualan akan terus bertambah, menyebabkan penyimpanan data semakin besar. Data transaksi penjualan hanya dijadikan arsip tanpa dimanfaatkan dengan baik. Pada dasarnya kumpulan data memiliki informasi yang sangat bermanfaat. Analisis keranjang pasar dengan Algoritma Apriori merupakan salah satu metoda data mining yang bertujuan untuk mencari pola assosiasi berdasarkan pola belanja yang dilakukan konsumen, sehingga bisa diketahui item-item barang apa saja yang dibeli secara bersamaan, Hasil dari penelitian ini menemukan  Nilai support dan confidence tertinggi adalah Minyak dan Susu dengan nilai support 42,85% dan confidence 85,71%.


2021 ◽  
Vol 5 (1) ◽  
pp. 31-40
Author(s):  
Deni Rizaldi ◽  
Arisman Adnan

Market Basket Analysis (MBA) merupakan salah satu teknik penemuan aturan asosiasi dalam data mining. MBA memanfaatkan data transaksi pada suatu toko untuk menentukan strategi penjualan. Konsep utama analisis ini adalah menentukan barang yang dibeli secara bersamaan oleh konsumen. Penentuan asosiasi dalam MBA berdasarkan kriteria minimum support dan confidence. Penelitian ini menggunakan algoritma apriori untuk data transaksi 212 Mart Soebrantas Pekanbaru periode Januari-Desember 2020. Algoritma apriori merupakan algoritma yang efisien untuk menentukan kandidat aturan asosiasi pada data dengan jumlah besar. Aturan asosiasi yang akan dibangkitkan adalah aturan asosiasi antar kelompok item dan asosiasi antar item. Berdasarkan hasil analisis ditemukan aturan asosiasi antar kelompok yang terbaik berdasarkan nilai lift tertinggi yaitu asosiasi antara clothing care dan body care dengan support 6,1% dan confidence 45,88 %. Aturan asosiasi terbaik untuk item yaitu asosiasi Lemonilo Mie Instan Ayam Bawang 7 dan Lemonilo Mie Instan Kari Ayam dengan support 0,17% dan confidence 42,11%.


Sign in / Sign up

Export Citation Format

Share Document