Draft:Retail analytics
Submission declined on 26 February 2024 by Crunchydillpickle (talk). Thank you for your submission, but the subject of this article already exists in Wikipedia. You can find it and improve it at Retail analytics instead.
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- Comment: Hey! Welcome to Wikipedia and thanks for the submission! I think this topic is already adequately covered by Business analytics and Customer analytics. If you'd like to add some of this info to one of those existing articles, you're welcome to. Feel free to let me know if you have any thoughts! Thanks and happy editing :-) Crunchydillpickle🥒 (talk) 15:33, 26 February 2024 (UTC)
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Retail analytics encompasses the collection, processing, and analysis of data related to various facets of retail operations. This includes sales transactions, customer interactions, inventory levels, marketing campaigns, and more. By harnessing advanced technologies such as data mining, machine learning, and predictive analytics, retailers can derive valuable insights from large volumes of data to make informed decisions.[1]
Types
[edit]Types of retail data analytics encompass four distinct categories, each providing valuable insights to retailers.[2]
- Descriptive Analytics
- Descriptive analytics, as the name suggests, enables retailers to understand the current state of their business by analyzing raw data. It serves as a foundational approach to uncovering key trends and patterns within retail operations.
- Diagnostic Analytics
- This type of retail data analytics delves deeper into understanding the "why" behind observed trends. By correlating with descriptive analytics, retailers can identify underlying causes behind fluctuations such as sales drops or shifts in customer behavior.
- Predictive Analytics
- Predictive analytics empowers retailers to anticipate future trends and outcomes based on historical data and patterns. By recognizing and extrapolating patterns, retailers can make informed decisions regarding future strategies and actions.
- Prescriptive Analytics
- The most advanced form of analytics, prescriptive analytics, goes beyond predicting future trends to recommend specific actions that retailers should take. By synthesizing insights from descriptive, diagnostic, and predictive analytics, prescriptive analytics guides retailers in making proactive and strategic decisions to optimize business outcomes.
Benefits
[edit]- Improved Decision-Making
- Retail analytics provides retailers with actionable insights derived from empirical data, enabling informed decision-making across all aspects of retail operations.[3]
- Optimized Marketing ROI
- Marketing analytics enables retailers to measure the effectiveness of marketing campaigns, allocate resources efficiently, and optimize ROI by focusing on initiatives that deliver the highest impact.
- Increased Sales and Revenue
- Sales analytics helps retailers identify growth opportunities, optimize pricing strategies, and target marketing efforts effectively, resulting in increased sales and revenue.
- Enhanced Customer Experience
- By understanding customer preferences and behavior, retailers can personalize interactions, tailor offerings, and deliver a superior customer experience, fostering loyalty and repeat business.
- Optimized Inventory Management
- Inventory analytics enables retailers to optimize stock levels, minimize stockouts, and reduce excess inventory, leading to improved inventory turnover and lower holding costs.
- Cost Savings
- Operational analytics allows retailers to identify and address inefficiencies in processes and workflows, leading to cost savings through improved productivity and resource allocation.
- Competitive Advantage
- By leveraging retail analytics, retailers can gain a competitive edge by staying ahead of market trends, understanding customer needs, and delivering value-added services.[4]
Data Collection
[edit]Gathering data in physical retail environments poses significant challenges compared to online platforms, where data collection is more straightforward. To overcome this hurdle, retailers can employ various strategies to gather valuable customer insights and raw data effectively.[5]
- Utilize Point of Sale (POS) systems to glean valuable information such as profit margins, sales trends, and customer counts. This data aids in forecasting purchases and managing inventory efficiently.
- Monitor foot traffic within the store to ascertain the actual number of customers and their behavior. Analyzing foot traffic enables retailers to determine conversion rates, peak activity times, and shopping trends during special occasions.
- Conduct periodic market research to identify emerging trends and industry shifts, thereby understanding their impact on the business.
- Implement surveys and feedback forms as effective tools for obtaining quantitative data directly from customers. This approach allows for targeted inquiries, providing insights into areas for improvement to better meet customer needs.
References
[edit]- ^ Platt Retail Institute, LLC. "Journal Of Retail Analytics" (PDF). North Western Retail Analytics Council.
- ^ Rooderkerk, Robert P.; DeHoratius, Nicole; Musalem, Andrés (October 2022). "The past, present, and future of retail analytics: Insights from a survey of academic research and interviews with practitioners". Production and Operations Management. 31 (10): 3727–3748. doi:10.1111/poms.13811. ISSN 1059-1478. S2CID 251031015.
- ^ James, Collins; Lee, Gates. "Pragmatic Retail Analytics" (PDF). Berkeley University O California.
- ^ "Journal Of Retail Analytics" (PDF). Platt Retail Institute's.
- ^ "The Future Of Retail Suppy Chains". www.mckinsey.com.