Submitted By:Bhanu Pratap Singh 10609079
Bithika Bishesh 10609080Chetna Kohli 10609081
Deepshikha Jain 10609082Divya Bhatia 10609083
Garima Sharma 10609084Gaurav Passy 10609085
•Supermarkets
•Literature Review
– Influencing Customers
– Trends in Supermarket Optimization
•Impulse Shopping
Swarm-Moves
– Rationale – What
– How - Customer Profiles – How - Database
– On-Sale Factor – Swarm Factor – Decision Rule
•Results
•Conclusion and Future Work
•In today's multi-billion dollar supermarket industry, Impulse shopping accounts for 2 out of 3 purchases. •Despite the current situation, most retail stores attempt to benefit from the fact that people are impulsive in nature as a way to maximize their profits. •In order to improve on current levels of sales, retail stores and supermarkets need to look at out-of-the-box to solutions that may, at first, not appear useful. •One such approach is the study of levels of self-organization in people while they are doing their shopping. •This thesis discusses the status-quo of supermarket optimization and leaps into how a supermarket can use real-time simulation information about customer purchases and apply models inspired by RFID and feedback to customers empower customers with leading products sales level .
Intent : To understand the factors that influence customer shopping behavior in a supermarket for increased sales and profits by stretching their buying limit .
Questions attended: 1.What would be the benefit of using RFID tags and
scanners in the Supermarkets ? 2. What is the collective customers’ choice in given
amount of time with a set of customers? 3. What is the effect of depth of promotion on sales
volume?
Tools & Measures : 1. RFID (radio-frequency identification) Identifies data and information through radio signals on the tags implanted on the products which helps to gather a regular information about the buying pattern of the customer. 2. Neural Networks using KDD (Knowledge Discovery in Databases) Identifies patterns and information in the past data to predict the future sales and requirements of weekly demand on items in a supermarket.
Proposed Model Swarm Sale Model : A simulation model which forms the basis of this research after understanding mob mentality defined as “A human observing others performing a task is inclined to “join in” and perform the same task”. Concepts used in Swarm Sale Model Impulse Shopping- Here the real time customers in the store buys product based on the average shopping behavior of other customers in the store thinking as a so-called good value offer Constituent of Swarm Sale Model •A. Customers’ Profiles: represents the purchase probability of customer per product category. •B. Sales Model : . This model will increase the probability of purchase of buying a product •C. Herd model: attempts to capture the average choice of the most common item(s) customers are buying. •D. Cheaters : A customer that can be controlled by the supermarket for their own benefit but it treated as an ordinary agent by other agents.
•Herd model demonstrate better realistic performance over Customer profiles, Cheaters and Sales model .It serves as an effective marketing tool for supermarkets to increase their sales volume based on emergent properties of customers in the store. •Herd model with the simulation was able to answer many of the above listed questions in a real supermarket setting.
More profit and sales is the number one priority for every manufacturer to live, succeed and be in the business.
There are generally two ways to do this
Out-store tactics:, inventory management, advertising campaigns,
marketing, product positioning, pricing etc From manufacturing of the product to place it in the supermarket shelves.
In-store tactics: When customers reaches the supermarket:
Bargains, everyday low prices, special and limited offers, buy-one-get-one, free samples, shelf-reorganization.
In the future the Swarm-Moves could be extended to answer many other questions that could also help retail stores in their decision making process:
1. What is the effect of products’ individual factors on impulse shopping?
2. What is the most prominent factor to increase impulse shopping in real-time?
3. Should we impose ’cross categorization’ to increase sales in a given time? Or should we impose ’uniform categorization’ to help the customer to find aproduct and to save time?
4. What is the most common path of customers?
5. What would be the effect of adding shelves and/or product in sales ofsupermarket?
Two opposite goals - Retailers want to keep the customers in the store for as long as possible while customers want to leave the store as soon as they finished their planned shopping.
Background Music, Greetings, Smiley, EDLP, Bargains, Sales, Internet Booths, ATM, Barber Shops, Pharmacy all are trying to keep the customer as long as they can.
Customer visits Supermarket (on average) 2 to 4 times per week
Both approaches either work before customers enter the market (Out-store) and after they leave the market (In-Store for next set of customers)
Immediate, unintended, powerful and persistent urge to buy the product
Unplanned Buying. Classification Pure Impulse: Immediate urge to buy a product
which breaks the normal shopping pattern.
– Reminder Impulse: Shopper sees an item and remembers that he is out of stock or an advertisement about that product.
– Suggestion Impulse: Customer has no prior
experience of an item, he saw the item and realized the need for it.
– Planned Impulse: Customer wants to buy
some product given it is on sale or have some special bargain.
Impulse Shopping accounts for 40% of all shopping in supermarkets.
People have a natural tendency to follow the crowd.
Knowing what is being purchased by other people in real-time may/will affect others to purchase the same product(s). Ideally, the implementation of our model can provide costumers with a better shopping experience and retailers with a higher sales level, thus easing the tension that we described earlier between the customers’ and the stores’ goals.
Customers equipped with RFID-enabled shopping carts can get information about other costumers purchases yet informing the store of their own shopping.
The Swarm-Moves simulator attempts to capture the
’Collective Average Choice’ that costumers are taking.
No need to worry about
“Why”. (Customer’s ages, sex, status, pay etc)
Just “What”
Swarm-Moves implements a model where customers have profiles, with the likelihood of purchase from individual category (Books and CD example).
Probability is also influenced by discount (sales) price and the collective choice of other costumers in the store
Database contains the inventory of Swarm-Mall (The Virtual Supermarket)
It has 120 products with following attributes
Item Name, Price, Size, Advertisement Percentage,
Prominent Display (Yes, No), Weight, Product Life, On-Sale percentage, Category, Good-will (Brand name)
A cheater is a customer that can be controlled by the supermarket for their own benefit but it treated as an ordinary customer by other customers.
A cheater customer who is buying just to increase the number of units sold and therefore increasing the chances of products’ recommendation by the Herd model.
The cheaters can cheat and exploit the portion of influence they have being a customer on overall supermarket’s Herd behaviour.
The cheaters have their own list of items to purchase that contains the products supermarket wanted to sell more
Implementation of supermarket simulation uses:
1. A database where profiles of agents (customers) and products are present.
2 The product profiles basically represent the product description, that includes name, code, color, size, weight, price, promotion, brand, expiry date (if any) etc. The database contains 120 products in total.
Assumptions for simulation :1. Agents have enough money to buy.2. Agents can see only one product at a time and cannot buy the same product
twice. 3 There is no shortage of products in the shelves and all agents are equipped
with RFID equipped shopping carts
To make the decision to buy any item or not, program uses Equation where a factor f(x) is applied to the main probability of buying (from the agents profile) the factor f(x) represents the sales model (in Equation 1), or the Herd model (in Equation 2), or both applied in series. The probability P new is then used by the agent to buy the product or not.
P new = (P profile + (1− P profile )× F(x)
As soon as the simulation starts, the trolleys will have all planned items. Simulation starts when agents enter the supermarket from the main door.
Yellow lens shows scanning of the items & the red lens blinks.
Simulation ends when all agents exit through the exit gate.
This section concentrates on demonstrating that Herd model is indeed a model able to show improvements on the overall sales volumes in supermarkets
Herd model is a sales tool In comparison to other models , Herd
model offer similar results without losing money on sales deals or price reduction
It is able to generate better unit sales by incorporating Average Common Choices
Swarm model contribution looks like the sigmoid.
There is a threshold point in graph which changes the customers decision to buy the product and at certain point it will stabilize.
These threshold and stabilization point can be different for each product of different categories
The simulation offers an effective marketing tool for supermarkets to increase their sales volume based on collective choice of customers.
The Swarm-Factor has the similar effects as of depth of promotion in supermarket sales.
Environmental information can be used to influence customers to buy more on impulse.
The initial results should be validated in a real supermarket setting.
Cheaters
Addition of multiple entrance and exits
Combine Bargains
Effect of other factors like price, weight, size, advertisement and prominent display on Sales Volume and Impulse Shopping.
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