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BUSA90544_2025_OCT Marketing Analytics Mid-term Exam 2025

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The following information/data refers to Questions 7-10: You were hired as a consultant by SeeEverything, a store chain, which sells binoculars. You obtain the data “binoculars_midterm.csv” (as shared on CANVAS:  Download_Section_DataSets_Exams). The file contains the following variables: Sales: Sales volume data Prices: Price of binoculars Year: Calendar year Country: Country of branch Order_type: Sales channel the binoculars were sold through Cost_plastic: costs of plastic (per kg) Cost_sugar: costs of sugar (per 10 kg) Cost_sand: costs of sand (per kg) Note: We assume a constant price elasticity.   If we rely on naive OLS but still want to control for as many [observable] confounders as possible, what is the price elasticity of demand?

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First, I will restate what we’re given and what we’re being asked to do, then I’ll walk through how to approach estimating price elasticity of demand using a naive OLS framework with observable controls. Restated scenario and goal: - Data: binoculars_midterm.csv with variables Sales, Prices, Year, Country, Order_type, Cost_plastic, Cost_sugar, Cost_sand. - Goal: If we rely on naive OLS while controlling for as many observable confounders as possible, what is the price elasticity of demand? - Note in the prompt: The provided answer field contains a single value -0.457, but there are no answer choices listed for us to evaluate. Key concept: price elasticity of demand via regression - Price elasticity of demand (in a basic sense) measures the percentage change in quantity demanded (or Sales, in this case) in response to a 1% change in price. - In a regression framework, if you log-transform both the dependent variable (Sales) and the price variable (Prices), the coefficient on log(Prices) is the own-price elasticity (assuming a log-log model). Specifically, if you estimate: log(Sales) = beta0 + beta1 * log(Prices) + controls + error, then beta1 is the elasticity (percentage change in Sales for a 1% change in Price). - If you in......Login to view full explanation

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