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Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 1 Marketing Analytics II Chapter 9: Distribution Analytics Stephan Sorger www.stephansorger.com Disclaimer: All images such as logos, photos, etc. used in this presentation are the property of their respective copyright owners and are used here for educational purposes only

Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 2 Outline/ Learning Objectives Topic Description Distribution Concepts Channel Model Distribution Metrics Cover essential distribution concepts & terminology Introduce proprietary channel evaluation model Discuss useful metrics for distribution

Distribution Channel Members Closeout Retailers Big Lots Convenience Retailers 7-Eleven Corporate Retailers Niketown Dealerships Ford Non-Internet Retailers Franchises Taco Bell Mass Merchandisers Sears Off-Price Retailers Marshalls Specialty Retailers Sunglass Hut Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 3

Distribution Channel Members Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 4 Sample Retailers, Non-Internet

Distribution Channel Members Aggregators Corporate Sites Internet-based Retailers Discount Specialty Sample Retailers, Internet-based Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 5

Distribution Channel Members Distributor Liquidator Non-Retailer Intermediaries Value-Added Reseller Wholesaler Examples of Non-Retailer Intermediaries Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 6

Distribution Channel Members Company-Owned Dealership Services-Based Channel Members Franchises for Services Internet Examples of Services-based Channel Members Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 7

Distribution Intensity Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 8 More Brand Control Exclusive Distribution Intensity Selective Intensive More Sales Outlets Snap-On Tools -Exclusive through franchise -Direct selling in tool trucks Coach -Coach stores -Bloomingdales -Macy s -Nordstrom Verizon cell phones -Verizon stores -Apple stores -Best Buy stores -Costco -Radio Shack -Walmart -Independents

Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 9 Distribution Channel Costs Channel Discounts Market Development Funds Co-Op Advertising Logistics Typical Distribution Costs Sales Performance Incentive Trade Margins

Retail Location Selection Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 10 San Francisco San Jose Geographical Area Identification Potential Site Identification Individual Site Selection

Retail Location Selection: Gravity Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 11 Target Market Area A Store A: 5000 square feet; 4 miles away B B: 10,000 sq ft; 5 miles C: 15,000 sq ft; 8 miles C Calculates probability of shoppers being pulled to store, as if by Gravity Probability = [ (Size) α / (Distance) β ] Σ [ (Size) α / (Distance) β ]

Retail Location Selection: Gravity Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 12 Target Market Area Step 1: 1. Step One: Calculate the expression [ (Size) α / (Distance) β ] for each store location Store A: [ (Size) α / (Distance) β ]: [ (5) 1 / (4) 1 ] = 1.25 Store B: [ (Size) α / (Distance) β ]: [ (10) 1 / (5) 1 ] = 2.00 Store C: [ (Size) α / (Distance) β ]: [ (15) 1 / (8) 1 ] = 1.88 2. Step Two: Sum the expression [ (Size) α / (Distance) β ] for each store location. Σ [ (Size) α / (Distance) β ] = 1.25 + 2.0 + 1.88 = 5.13 A Store A: 5000 square feet; 4 miles away B B: 10,000 sq ft; 5 miles C: 15,000 sq ft; 8 miles C

Retail Location Selection: Gravity Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 13 Target Market Area A Store A: 5000 square feet; 4 miles away 3. Step Three: Evaluate the expression [ (Size) α / (Distance) β ] / Σ [ (Size) α / (Distance) β ] Store A: [ (Size) α / (Distance) β ] / Σ [ (Size) α / (Distance) β ]: 1.25 / 5.13 = 0.24 Store B: [ (Size) α / (Distance) β ] / Σ [ (Size) α / (Distance) β ]: 2.00 / 5.13 = 0.39 Store C: [ (Size) α / (Distance) β ] / Σ [ (Size) α / (Distance) β ]: 1.88 / 5.13 = 0.37 B B: 10,000 sq ft; 5 miles C: 15,000 sq ft; 8 miles C

Retail Location Selection Central Business District Near city centers; Urban brands Secondary Business District One major store, with satellite stores Neighborhood Business District Strip mall Shopping Center/ Mall Balanced tenancy Retail Site Selection Options Agglomerated Retail Areas Auto row; Hotel row Lifestyle Centers Williams-Sonoma Outlet Stores Outlet to sell excess inventory Specialty Locations Airport book stores Freestanding Retailer Separate building; Jiffy Lube Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 14

Retail Location Selection Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 15

Channel Evaluation and Selection Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 16 Channel Expected Profit Channel Customer Acquisition + = Channel Customer Retention Channel Customer Revenue Growth Most Effective Channel Member Model to evaluate and select channel members, based on unique needs of business

Channel Evaluation and Selection Model Location Brand Alignment Ability to attract new customers Customer Acquisition Criteria Physical Requirements Market-Specific Criteria Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 17

Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 18 Channel Evaluation and Selection Model Ability to retain customers Customer Retention Criteria Customer Support Customer Feedback Customer Programs

Channel Evaluation and Selection Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 19 Ability to grow revenue from customers; also known as share of wallet Customer Revenue Growth Criteria Consulting and Guidance Customer-Oriented Metrics Channel Growth

Channel Evaluation and Selection Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 20 INPUTS Revenue and Cost Data Criteria Assessments Channel Evaluation and Selection Model OUTPUTS Expected Profit Aggregate Customer-Related Scores

Channel Evaluation and Selection Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 21 INPUTS Revenue and Cost Data Criteria Assessments Channel Evaluation and Selection Model OUTPUTS Expected Profit Aggregate Customer-Related Scores Three-Step Execution: 1. Assess individual criteria: Calculate scores for each criterion (location, brand alignment, etc.) 2. Calculate total scores: Calculate the total scores for each criteria group 3. Calculate grand total score: Calculate grand total score for each channel alternative

Channel Evaluation and Selection Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 22 INPUTS Revenue and Cost Data Criteria Assessments Channel Evaluation and Selection Model OUTPUTS Expected Profit Aggregate Customer-Related Scores Model uses 3 Types of Data: Financial Data: Monetary terms (Dollars, Euros) for expected profitability Evaluation Criteria: User assessment based on rating scale (see next slide for ratings) Model Weights: Allows users to vary importance of different criteria

Channel Evaluation and Selection Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 23 Ratings

Channel Evaluation and Selection Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 24 Expected Profitability Gather revenue and cost information for each distribution channel member (e.g. retail store) Plug data into model to get totals in monetary and normalized formats

Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 25 Channel Evaluation and Selection Model Assess scores and weights for customer acquisition criteria Total = Weight (L) * L + Weight (BA) * BA + Weight (PR) * PR + Weight (MSC) * MSC

Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 26 Channel Evaluation and Selection Model Repeat process for Customer Retention and Customer Revenue Growth

Channel Evaluation and Selection Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 27 Calculate Grand Total, based on Total Scores from: EP: Expected Profit CA: Customer Acquisition CR: Customer Retention RG: Customer Revenue Growth

Channel Evaluation and Selection Model Acme Cosmetics Example: Weights and Assessment Scores Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 28

Channel Evaluation and Selection Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 29 Acme Cosmetics Example, Acme Customer Acquisition Acme Cosmetics Example, Acme Customer Retention Acme Cosmetics Example, Acme Customer Revenue Growth

Channel Evaluation and Selection Model Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 30 Acme Cosmetics Example, Acme Profitability Calculations Acme Cosmetics Example, Acme Grand Total Calculations

Multi-Channel Distribution Sales B C A Channel A: Retail Stores Channel B: Internet Stores Channel C: Specialty Stores Revenues by Channel, Product 1 (repeat for 2 & 3) Channel Sales Comparison Chart Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 31

Multi-Channel Distribution Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 32 C Channel C: Specialty Stores B Sales Channel B: Internet Stores A Channel A: Retail Stores Incremental Revenue By Channel, Product 1 Incremental Channel Sales Chart

Multi-Channel Distribution Multi-Channel Market Table: Cisco Consumer Markets Multi-Channel Market Table: Cisco Business Markets Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 33

Distribution Channel Metrics All Commodity Volume Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 34 Measures total sales of company products and services in retail stores that stock the company s brand, relative to total sales of all stores. ACV in Percentage Units: ACV = [Total Sales of Stores Carrying Brand ($)] / [Total Sales of All Stores ($)] ACV in Monetary Units: ACV = [Total Sales of Stores Carrying Brand ($)]

Distribution Channel Metrics All Commodity Volume Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 35 Measures total sales of company products and services in retail stores that stock the company s brand, relative to total sales of all stores. ACV in Percentage Units: ACV = [Total Sales of Stores Carrying Brand ($)] / [Total Sales of All Stores ($)] ACV in Monetary Units: ACV = [Total Sales of Stores Carrying Brand ($)] Example: Acme Cosmetics sells its products through a distribution network consisting of two stores, Store D and Store E. The other store in the area, Store F, does not stock Acme. Total sales of Stores D, E, and F, are $30,000, $20,000, and $10,000, respectively. ACV = [Total Sales of Stores Carrying Brand] / [Total Sales of All Stores] = [$30,000 + $20,000] / [ $30,000 + $20,000 + $10,000 ] = 83.3%

Distribution Channel Metrics Product Category Volume Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 36 Similar to ACV, but emphasizes sales within the product or service category PCV= [Total Category Sales by Stores Carrying Company Brand] [Total Category Sales of All Stores]

Distribution Channel Metrics Product Category Volume Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 37 Similar to ACV, but emphasizes sales within the product or service category PCV= [Total Category Sales by Stores Carrying Company Brand] [Total Category Sales of All Stores] Example: As we saw earlier, Acme Cosmetics sells its products through two stores, Store D and Store E. Stores D and E sell $1,000 and $800 of Acme products, respectively. The other store in the area, Store F, does not sell Acme products. Stores D, E, and F sell $1,000, $800, and $600 in the cosmetics category, respectively. PCV= [Total Category Sales by Stores Carrying Company Brand] [Total Category Sales of All Stores] PCV = [$1,000 + $800+ $0] / [$1,000 + $800 + $600] = 75.0%

Distribution Channel Metrics Category Performance Ratio Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 38 Ratio of PCV/ ACV Gives us insight into the effectiveness of the company s distribution efforts, relative to the average effectiveness of all categories Category Performance Ratio = [Product Category Volume] [All Commodity Volume]

Distribution Channel Metrics Category Performance Ratio Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 39 Ratio of PCV/ ACV Gives us insight into the effectiveness of the company s distribution efforts, relative to the average effectiveness of all categories Category Performance Ratio = [Product Category Volume] [All Commodity Volume] Example: Acme Cosmetics wishes to determine how the product category volume (sales in the category) for the relevant distribution channels compare to the market as a whole. We can use the category performance ratio to compute this. Category Performance Ratio = [Product Category Volume] [All Commodity Volume] = [75.0%] / [83.3%] = 90.0%

Stephan Sorger 2015: www.stephansorger.com; Marketing Analytics: Distribution: 40 Outline/ Learning Objectives Topic Description Distribution Concepts Channel Model Distribution Metrics Cover essential distribution concepts & terminology Introduce proprietary channel evaluation model Discuss useful metrics for distribution