India’s e-commerce advertising strategies
, by Sourav Ganguly, 6 min reading time
, by Sourav Ganguly, 6 min reading time
Advertisement-led monetization would be the most critical profitability lever for e-commerce platforms in India in 2024. With the digital ad spend market in India expected to reach $10 billion this year, all digital platforms are striving to gain a larger share of this flourishing and profitable ad market.
E-commerce platforms have a unique advantage in this growing market, with access to user preferences and transaction data while shopping on the platform which keeps it ahead of its contemporaries. Additionally, they can provide transparent performance tracking of ad spends, giving them a competitive edge as brands increasingly rank measurable and targeted performance marketing.
On-site ads are predominantly effective for achieving profitability for most e-commerce platforms. India’s retail media market now generates over $1.5 billion of ad revenue annually – a revenue stream considered by high margins and low cost of operations. E-commerce giants like Amazon and Flipkart have experienced a significant approximately 40% increase in cumulative ad revenue, reaching Rs 8,705 crore in the fiscal year through March 2023 with ambitious growth targets for the future. Meesho’s strategic focus on ad monetization emerged as a pivotal decision, contributing to the platform’s profitability, even amidst its zero-commission model.
Major operators in the food delivery and quick commerce sector, such as Zomato, Swiggy, and BigBasket, are also concentrating more on expanding ad monetization – a strategic move to increase profitability.
If you look at non-commerce platforms, such as Disney+ Hotstar, you would realize that even they are shifting from a subscription-oriented model to one centered around ads, recognizing the substantial revenue potential. JioCinema took a audacious decision to show IPL without needing a subscription, monetizing by ads instead . Netflix and Amazon Prime Video are also actively seeking to expand their market share through similar strategic maneuvers. In this competitive market environment, e-commerce platforms of all sizes and stages of maturity have ventured into the ads business, drawing inspiration from the success of market leaders and a greater emphasis on profitability by investors.
The rise of personalized ads and machine learning
Historically, e-commerce platforms optimized ads by targeting a diverse audience and implementing hard-coded rules. The lack of personalization made it difficult to strike a balance between maximizing ad revenue, fostering platform growth, and ensuring an engaging user experience. The lack of relevance in ads for users resulted in a three-sided problem: advertisers experienced lower return on investment (ROI), platforms fell short of their full potential revenue, and irrelevant ads bombarded users which ended up becoming problematic.
To sort out this issue, personalized advertising driven by machine learning (ML) algorithms is becoming increasingly crucial and is being adopted by many leading e-commerce companies globally. By leveraging first-party data and sophisticated ML algorithms, advertisers can tailor ads with unprecedented accuracy, leading to higher engagement and conversion rates.
ML-optimized smart bidding dynamically fine-tunes bids to optimize for every click based on multiple factors such as search terms, user-specific navigation, past purchase behavior, time of the day, and location, to name a few traits. For instance, the bid for a women’s running shoe may differ if the user’s search query was just “shoes” rather than “women’s running shoe”. Dynamic bid adjustments ensure that the advertising strategy is fine-tuned to each unique scenario. From a ranking perspective, real-time optimization further enhances ad performance, enabling platforms to adapt swiftly to changing contexts. For instance, the ranking of a “top” can significantly differ based on the skirt that was purchased by a user before browsing for the tops. Incorporating such nuances is critical to providing the most relevant ads for the user.
As the business evolves, the future of e-commerce advertising in India lies in hyper-personalization, where advanced AI techniques will play a pivotal role in delivering tailored ad experiences that resonate with individual preferences and aspirations.
Leveraging 1P data to enhance offsite retail media buying
Offsite retail media buying occurs when e-commerce sellers choose to advertise beyond the e-commerce platform, yet channel their spending through the platform due to its access to rich first-party data and reliable tracking mechanisms. Brands traditionally allocate substantial digital marketing budgets across various non-commerce platforms as well, but they often face challenges such as opaque tracking, unclear attribution, minimal data utilization, and suboptimal performance. E-commerce platforms hold an exclusive position to manage digital marketing expenditures of transacting brands, extending beyond their platforms, with access to a wealth of resources, including first-party data and audience insights
By providing robust analytics and tracking capabilities, e-commerce platforms empower brands to monitor the real-time performance of offsite marketing campaigns. This data-driven approach enables brands to refine and optimize their campaigns for superior outcomes using the platform’s first-party data in a secure and compliant way. Brands typically allocate marketing budgets into brand and trade marketing categories, with on-site ads primarily targeting the trade marketing budget. However, offsite advertising also allows e-commerce platforms to capture a portion of the brand marketing budget. Moreover, facilitating offsite media buys not only helps manage brands’ digital marketing expenditures but also drives order growth for the platform, owing to the user clicks directed to the platform itself.
E-commerce advertisers shift gear: demanding guaranteed results and output-based ad models
Ads were conventionally sold using input metrics like impressions and clicks, even within e-commerce platforms, despite the availability of output metrics, such as sales and orders. However, advertisers have become increasingly dissatisfied with input-based pricing models and demand-output-based models, where they only pay for tangible sales outcomes. The desire for greater accountability and transparency in advertising investments drives this shift. Advertisers identify that output-based advertising can be more cost-effective, and are willing to allocate disproportionately high budgets, particularly when they are directly tied to incremental orders. This allows advertisers to optimize budgets across products by accurately bidding based on the margin profile of each product, maximizing the impact of their advertising spend.
To succeed in this changing environment, e-commerce advertisers must embrace output-based ad models and leverage data-driven insights to optimize campaigns. Collaboration with advanced advertising-tech partners and offering performance-based solutions is crucial for success in this new era of advertising.
This changing dynamics in procedure will drive greater ad spending on e-commerce platforms, necessitating the implementation of a sophisticated data-led optimization engine to maximize earnings per ad slot and ensure a positive ROI. Platforms that can deliver on these expectations will thrive in an increasingly competitive and dynamic digital marketplace."