Leveraging User Research For Subscription Improvements

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Summary

Understanding user needs through research and applying those insights can significantly improve subscription services. By combining qualitative and quantitative methods, businesses can uncover customer pain points, preferences, and hidden needs to create tailored and engaging experiences.

  • Conduct qualitative research: Use interviews, surveys, and observational studies to uncover underlying customer needs and behaviors that may not be obvious from surface-level feedback.
  • Analyze data strategically: Study usage patterns, behavioral data, and trends to identify what drives customer preferences and address key gaps in service offerings.
  • Create and test prototypes: Develop iterative product prototypes and use real customer feedback to refine and adapt your subscription offerings over time.
Summarized by AI based on LinkedIn member posts
  • View profile for Prashanthi Ravanavarapu
    Prashanthi Ravanavarapu Prashanthi Ravanavarapu is an Influencer

    VP of Product, Sustainability, Workiva | Product Leader Driving Excellence in Product Management, Innovation & Customer Experience

    15,239 followers

    While it can be easily believed that customers are the ultimate experts about their own needs, there are ways to gain insights and knowledge that customers may not be aware of or able to articulate directly. While customers are the ultimate source of truth about their needs, product managers can complement this knowledge by employing a combination of research, data analysis, and empathetic understanding to gain a more comprehensive understanding of customer needs and expectations. The goal is not to know more than customers but to use various tools and methods to gain insights that can lead to building better products and delivering exceptional user experiences. ➡️ User Research: Conducting thorough user research, such as interviews, surveys, and observational studies, can reveal underlying needs and pain points that customers may not have fully recognized or articulated. By learning from many users, we gain holistic insights and deeper insights into their motivations and behaviors. ➡️ Data Analysis: Analyzing user data, including behavioral data and usage patterns, can provide valuable insights into customer preferences and pain points. By identifying trends and patterns in the data, product managers can make informed decisions about what features or improvements are most likely to address customer needs effectively. ➡️ Contextual Inquiry: Observing customers in their real-life environment while using the product can uncover valuable insights into their needs and challenges. Contextual inquiry helps product managers understand the context in which customers use the product and how it fits into their daily lives. ➡️ Competitor Analysis: By studying competitors and their products, product managers can identify gaps in the market and potential unmet needs that customers may not even be aware of. Understanding what competitors offer can inspire product improvements and innovation. ➡️ Surfacing Implicit Needs: Sometimes, customers may not be able to express their needs explicitly, but through careful analysis and empathetic understanding, product managers can infer these implicit needs. This requires the ability to interpret feedback, observe behaviors, and understand the context in which customers use the product. ➡️ Iterative Prototyping and Testing: Continuously iterating and testing product prototypes with users allows product managers to gather feedback and refine the product based on real-world usage. Through this iterative process, product managers can uncover deeper customer needs and iteratively improve the product to meet those needs effectively. ➡️ Expertise in the Domain: Product managers, industry thought leaders, academic researchers, and others with deep domain knowledge and expertise can anticipate customer needs based on industry trends, best practices, and a comprehensive understanding of the market. #productinnovation #discovery #productmanagement #productleadership

  • View profile for Bahareh Jozranjbar, PhD

    UX Researcher @ Perceptual User Experience Lab | Human-AI Interaction Researcher @ University of Arkansas at Little Rock

    8,025 followers

    One of the biggest challenges in UX research is understanding what users truly value. People often say one thing but behave differently when faced with actual choices. Conjoint analysis helps bridge this gap by analyzing how users make trade-offs between different features, enabling UX teams to prioritize effectively. Unlike direct surveys, conjoint analysis presents users with realistic product combinations, capturing their genuine decision-making patterns. When paired with advanced statistical and machine learning methods, this approach becomes even more powerful and predictive. Choice-based models like Hierarchical Bayes estimation reveal individual-level preferences, allowing tailored UX improvements for diverse user groups. Latent Class Analysis further segments users into distinct preference categories, helping design experiences that resonate with each segment. Advanced regression methods enhance accuracy in predicting user behavior. Mixed Logit Models recognize that different users value features uniquely, while Nested Logit Models address hierarchical decision-making, such as choosing a subscription tier before specific features. Machine learning techniques offer additional insights. Random Forests uncover hidden relationships between features - like those that matter only in combination - while Support Vector Machines classify users precisely, enabling targeted UX personalization. Bayesian approaches manage the inherent uncertainty in user choices. Bayesian Networks visually represent interconnected preferences, and Markov Chain Monte Carlo methods handle complexity, delivering more reliable forecasts. Finally, simulation techniques like Monte Carlo analysis allow UX teams to anticipate user responses to product changes or pricing strategies, reducing risk. Bootstrapping further strengthens findings by testing the stability of insights across multiple simulations. By leveraging these advanced conjoint analysis techniques, UX researchers can deeply understand user preferences and create experiences that align precisely with how users think and behave.

  • View profile for Carly Delaney

    VP of Sales @ Askable US | MBA Graduate | Aussie living in Chicago 🐨 🛬 🇺🇸

    14,474 followers

    Gut feel doesn’t scale. But research does. Enterprise teams don’t fail because they lack data. They fail because they don’t have the right data to make confident decisions. Officeworks—Australia’s equivalent of Staples—was missing something crucial. They needed the customer’s voice at the decision-making table. Instead of adding more surveys and dashboards, they flipped the script. 💡 They made qualitative research fast, frequent, and frictionless. Here’s how they did it (and how you can too): 1️⃣ Smaller, faster research cycles. No more waiting months for reports. They tapped into real customer feedback in days. 2️⃣ Insights that hit home. UX didn’t just summarize findings—they brought stakeholders into the research. Watching customers struggle with designs created urgency. No PowerPoint deck could do that. 3️⃣ Tied research to business outcomes. Insights didn’t sit in a repository. They shaped product decisions that improved experience, boosted engagement, and drove revenue. This is research that doesn’t just sit in a report—it moves the needle. Askable #UXResearch

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