Content build showing the process to create a marketing email

What is market segmentation?

Marketers today face challenges with data overload. They also struggle with identifying and understanding their target audience's diverse needs. Have you been overwhelmed sifting through customer information? Have you found the methods of getting organised are time-consuming and labor-intensive?

Marketing segmentation can help. When you divide a broad target market into smaller, more manageable groups based on shared attributes, you can understand your audience better. An example of one segment could be "Young Professionals," consisting of people aged 25-35 who work in urban areas and are interested in trendy, professional attire. Another segment could be "Outdoor Enthusiasts," comprising individuals of all ages who enjoy outdoor activities such as hiking, camping, and skiing, and are interested in durable and functional clothing.

By segmenting audiences based on actionable criteria and using data insights, your business can deliver targeted messages that resonate with specific audience segments. It all boils down to your prospect's behaviours or demographic. And from there, you can deliver what's needed to different people.

The good news is, you can achieve scalable personalisation with data-driven marketing segmentation. And the talk of how AI marketing can help is true. According to our researchOpens in a new window, 74% of marketers that use AI say it helps improve customer segmentation. (Don’t worry, we’ll get into how you can use AI in your strategy in this blog.)

Cover of the Salesforce State of Marketing report

See the top trends in data, AI, and more — from nearly 5,000 marketers worldwide.

What is market segmentation?

Marketing segmentation is when you divide a broader target market into smaller groups based on shared attributesOpens in a new window. Segmentation enables you to better understand your diverse audience, tailor messages to specific segments' needs, and ultimately increase the effectiveness of your campaigns. Technologies for segmentation include customer relationship management (CRM) systems, data analytics platforms, and marketing automation tools, all of which help collect, analyse, and use data to identify and target relevant audience segments with precision.

Your work becomes tailoring your marketing efforts to specific sections with the goal of meeting the preferences of each group. Once you do that, you’re on your way to personalising your marketing campaigns. A clothing retailer might tailor promotions differently for young adults seeking trendy styles versus middle-aged professionals looking for classic attire. Both segments will resonate with the campaign, which makes them feel “seen .” This level of personalisation leads to higher conversion rates and customer satisfaction.

Segmentation also facilitates product development and refinement. By understanding the unique preferences and pain points of different segments, you can iterate on your products or services to better address specific needs. A software company might analyse segmentation data to identify features that appeal most to small businesses versus enterprise clients, resulting in more successful product launches and increased market share.

Segmentation helps optimise your marketing budgets. By focusing efforts on high-potential segments, you can allocate resources more efficiently. By delivering personalised content and experiences, your business can foster stronger connections with targeted audiences.

What are the types of marketing segmentation?

Each type of marketing segmentation provides insights into different aspects of consumer behaviour. This specificity enables you to tailor your strategies more effectively.

  • Understanding demographic characteristics such as age, gender, income, and education helps you identify distinct groups. This segmentation is valuable because demographic factors often correlate with consumer needs, preferences, and purchasing behaviours. For example, a retirement planning service would target older adults nearing retirement age with specific financial planning solutions.
  • Psychographic segmentation delves into consumers' lifestyles, values, interests, and personalities, providing a deeper understanding of their motivations and decision-making processes. With it, you can create more emotionally resonant marketing messages and products that align with consumers' beliefs and aspirations. For instance, a sustainable fashion brand targeting environmentally-conscious consumers can develop messaging that appeals to their values of eco-conscious living.
  • Behavioural segmentation focuses on consumers' purchasing behaviours, including their usage patterns, brand loyalty, benefits sought, and occasion of purchase. This reveals how consumers interact with products or services, so you can tailor your marketing efforts to address specific needs and motivations. Example: A subscription-based meal kit service might target busy professionals with time-saving solutions for weekday dinners.
  • Geographic segmentation divides the market based on location, climate, population density, and cultural preferences. It recognises the diversity of consumer needs and preferences across different regions. With it, you can alter your strategies accordingly. A sunscreen manufacturer will prioritise marketing higher SPF products in regions with intense sunlight exposure, while focusing on water-resistant formulas in coastal areas.

Build lasting relationships that drive growth with Marketing Cloud.

Action all your data faster with unified profiles and analytics. Deploy smarter campaigns across the entire lifecycle with trusted AI. Personalise content and offers across every customer touchpoint.

How do you collect data for marketing segmentation?

Collecting data Opens in a new windowfor marketing segmentation involves advanced analytics tools, data mining techniques, and technology platforms.

You’ll need to consider how you deal with first-party data, among other things. In an environment where third-party data is becoming more restrictedOpens in a new window due to privacy regulations and changes in digital advertising practices, first-party data offers a secure and compliant alternative for driving effective segmentation strategies. First-party data provides your businesses with accurate and reliable insights directly from your customers. With it, you can create more meaningful segments based on real customer behaviours, preferences, and interactions with your brand. This data helps you tailor personalised marketing campaigns. When you do that you can deliver the messages that resonate with your audience segments.

So what are the sources from which to collect comprehensive customer data?

  • Using customer surveys and feedback provides valuable firsthand insights into consumer preferences, opinions, and behaviours. For example, a clothing retailer might conduct surveys to gather feedback on product preferences, sizing issues, and shopping habits, enabling them to tailor their product offerings and marketing messages accordingly.
  • Using website analyticsOpens in a new window and user behaviour data allows you to track and analyse how consumers interact with your online platforms. You can uncover valuable insights into browsing patterns, content engagement, and conversion metrics. Example: An e-commerce website might use analytics to identify pages with high bounce rates, indicating potential usability issues or ineffective marketing messaging. This will prompt the e-commerce site to make adjustments to improve the user experience.
  • Integrating CRM (Customer Relationship Management) systems enables your businesses to centralise customer data from various touchpoints, facilitating a comprehensive view of individual customer interactions and preferences. Let’s say a telecommunications company integrates CRM data to track customer service inquiries, purchase history, and subscription preferences. Their customer support representatives can provide personalised assistance and targeted offers based on each customer's unique needs and preferences.

Data harmonisation and unified customer profiles are crucial. By integrating data from various channels into a unified view of the customer, you gain the big-picture understanding of individual preferences, behaviours, and needs. This begets more accurate segmentation, targeted marketing efforts, and tailored product recommendations. Remember, the goal is to foster stronger customer relationships and drive higher levels of engagement and loyalty.

AI plays a pivotal role in this by automating and streamlining the process of analysing and synthesising large volumes of data from disparate sources. Machine learning algorithms can identify patterns, correlations, and insights within complex datasets. Predictive analytics help you anticipate future behaviours and preferences.

AI enables real-time decision-making and personalised experiences at scale by continuously analysing and adapting to customer interactions and behaviours. For example, AI-powered recommendation engines can dynamically personalise product recommendations based on individual browsing history, purchase patterns, and contextual signals.

Astro standing with outstretched hands in front of the Marketing Cloud newsletter.

Stay up to date on all things marketing.

Sign up for our newsletter to get the latest research, industry insights, and product news delivered straight to your inbox.

What are the best practices for effective marketing segmentation?

Effective marketing segmentation relies on several key best practices to maximise its impact. Follow these steps to integrate what we’ve reviewed so far:

  • Begin by gathering and harmonising data from various sources to create unified customer profiles. This ensures a holistic view of your audience, enabling more accurate segmentation and personalised targeting.
  • Establish clear and relevant segmentation criteria based on demographic, psychographic, behavioural, and geographic factors. Ensure that these criteria align with your business objectives and target audience characteristics.
  • Focus on segments that offer the greatest potential for ROI and alignment with your marketing goals. Prioritise segments with distinct needs, behaviours, and responsiveness to your offerings.
  • Continuously test and refine your segmentation strategies based on performance data and feedback. Experiment with different segmentation variables, messaging approaches, and campaign tactics to optimise results over time.
  • Incorporate segmentation into every stage of your marketing strategy, from product development and messaging to channel selection and campaign execution. Ensure consistency and relevance across all touchpoints to enhance the overall customer experience.

Building segmentation based on actionable criteria is crucial for ensuring that marketing efforts are targeted and effective. By focusing on criteria that directly impact consumer behaviour and purchasing decisions, you can identify segments with clear needs, preferences, and responsiveness to your marketing messages.

But don’t stop there. As consumer preferences, behaviours, and market dynamics evolve, your job is to adapt your segmentation strategies. By regularly reviewing and refining segments based on the latest data and insights, you can identify emerging trends, shifts in consumer behaviour, and new opportunities for engagement. And don’t neglect the capabilities of AI. Using it to analyse vast amounts of data efficiently can help you identify patterns and trends, and automate personalised campaign delivery at scale.

What are some common segmentation mistakes to avoid?

The effectiveness of your marketing efforts depends on avoiding some common pitfalls, such as over-segmentation, overlooking diverse demographic data, inconsistencies in data collection, and more.

Keep these tips in mind as you define your strategy:

  • Don’t lose focus. Creating too many segments can dilute resources and lead to fragmented messaging. Instead, focus on creating a manageable number of segments that capture the most significant variations in consumer behaviour and preferences.
  • Use multiple data sources. Relying solely on demographic segmentation overlooks the diverse needs and behaviours within each demographic group. Supplement demographic data with psychographic, behavioural, and geographic insights for a more comprehensive understanding of your audience.
  • Check for duplicate customer profiles. Do you have duplicate customer profiles from different data sources? This can lead to inaccurate segmentation and personalised targeting. Implement data governance practices to ensure data quality and integrity across all systems and platforms.
  • Review your feedback. Failure to adapt segmentation strategies based on customer segments can result in missed opportunities and decreased effectiveness over time. Regularly solicit feedback from segments and analyse performance metrics to identify areas for improvement and optimisation.

Good segmentation serves as the foundation for your current marketing campaigns and shapes your entire business ethos. The sooner you establish effective segmentation practices, the sooner you can begin refining your understanding of your audiences.

Segmentation is an iterative process. It helps you reach customers in better ways and makes your marketing more efficient. Investing in good segmentation sets the stage for long-term success, driving sustained growth, customer satisfaction, and competitive advantage.