SUPERMARKET SALES ANALYSIS AND PREDICTION MACHINE LEARNING: VIVIAN SIAHAAN AND RISMON H. SIANIPAR

  Рет қаралды 4

DrEng Rismon H Sianipar

DrEng Rismon H Sianipar

11 күн бұрын

SUPERMARKET SALES ANALYSIS AND PREDICTION USING MACHINE LEARNING WITH PYTHON GUI
The dataset used in this project consists of the growth of supermarkets with high market competitions in most populated cities. The dataset is one of the historical sales of supermarket company which has recorded in 3 different branches for 3 months data. Predictive data analytics methods are easy to apply with this dataset.
Attribute information in the dataset are as follows: Invoice id: Computer generated sales slip invoice identification number; Branch: Branch of supercenter (3 branches are available identified by A, B and C); City: Location of supercenters; Customer type: Type of customers, recorded by Members for customers using member card and Normal for without member card; Gender: Gender type of customer; Product line: General item categorization groups - Electronic accessories, Fashion accessories, Food and beverages, Health and beauty, Home and lifestyle, Sports and travel; Unit price: Price of each product in $; Quantity: Number of products purchased by customer; Tax: 5% tax fee for customer buying; Total: Total price including tax; Date: Date of purchase (Record available from January 2019 to March 2019); Time: Purchase time (10am to 9pm); Payment: Payment used by customer for purchase (3 methods are available - Cash, Credit card and Ewallet); COGS: Cost of goods sold; Gross margin percentage: Gross margin percentage; Gross income: Gross income; and Rating: Customer stratification rating on their overall shopping experience (On a scale of 1 to 10).
In this project, you will perform predicting rating using machine learning. The machine learning models used in this project to predict clusters as target variable are K-Nearest Neighbor, Random Forest, Naive Bayes, Logistic Regression, Decision Tree, Support Vector Machine, LGBM, Gradient Boosting, XGB, and MLP. Finally, you will plot boundary decision, distribution of features, feature importance, cross validation score, and predicted values versus true values, confusion matrix, learning curve, performance of the model, scalability of the model, training loss, and training accuracy.
GET THE BOOK ON AMAZON:
www.amazon.co.uk/dp/B09Y32FMQ5

Пікірлер
🤔Какой Орган самый длинный ? #shorts
00:42
THEY WANTED TO TAKE ALL HIS GOODIES 🍫🥤🍟😂
00:17
OKUNJATA
Рет қаралды 24 МЛН
БОЛЬШОЙ ПЕТУШОК #shorts
00:21
Паша Осадчий
Рет қаралды 10 МЛН
Sneaky Tricks Grocery Stores Use to TRICK You!
8:19
Everything Science
Рет қаралды 99 М.
Generative AI in a Nutshell - how to survive and thrive in the age of AI
17:57
supermarket sales   ijan   Excel 19/08/ 2023
14:38
Data Analytics
Рет қаралды 79
The Incredible Logistics of Grocery Stores
16:50
Wendover Productions
Рет қаралды 3,2 МЛН
Mastering Cold Calling in 2024
9:11
Bri Galarza
Рет қаралды 110