A Transformational Approach To Data
While there may not be an intuitive connection between the world of professional poker and college admissions - there's one significant thread linking them together.
Over the course of a generation, both saw the "nerds" take over.
(Nerds is meant very lovingly here)
In both poker college admissions, we transitioned from an era of gut instinct and personal anecdote to a time when those of us who were more skillful with data analytics were able to better position ourselves for success.
This short clip gives you a sense of it - but the full webinar is available on demand and gives enrollment leaders key insights on how to move forward in this new data-driven world.
Teege Mettille
Higher education professional with experience in admissions, enrollment, retention, residence life, and teaching. After working on six different college campuses, I'm excited to be consulting with a wide variety of institutions to better meet enrollment targets.I have been fortunate to serve as President of the Wisconsin
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Understanding enroll ml and Outcome Optimization Theory in Enrollment Management
Marketers have long mastered optimizing the consumer journey by focusing on strategic touchpoints that drive long-term loyalty and value. It's time for enrollment management to harness that same power. After a decade of mixed results striving towards real-time predictive analytics in higher education admissions, we can now pose an interesting thesis: perhaps we may have been using the wrong tool for the job. This post introduces you to the concept of Enrollment Outcome Optimization, which is deployed by enroll ml to prioritize long-term outcomes over immediate predictions—empowering admissions teams to make better-informed, more impactful decisions. This approach leads to more consistent, data-stable results, fundamentally transforming the enrollment process.
What is Outcome Optimization?
Outcome Optimization allows admissions counselors to identify and guide best-fit students through the enrollment process strategically. Unlike traditional predictive analytics, which are like road signs requiring constant interpretation, Outcome Optimization provides a GPS-like path, highlighting the critical actions that influence a student’s decision to enroll. This approach helps counselors focus on meaningful interactions today while planning future steps, aligning efforts to support students' needs and boost enrollment success.
Key Benefits of Outcome Optimization:
- Strategic Decision-Making: Focuses on high-impact actions to keep best-fit students on the optimum enrollment path.
- Holistic View: Offers a comprehensive understanding of the student journey, from current status to future steps.
- Risk and Opportunity Identification: Detects deviations from expected behaviors, helping mitigate melt risks and capture incremental enrollments.
- Optimized Focus: Prioritizes high-value students, reducing time on low-impact interactions.
- Consistency and Efficiency: Streamlines prioritization, enhances resource use, and provides predictable outcomes.
- Proactive Engagement: Anticipates challenges and guides students toward their enrollment goals.
How enroll ml's Machine Learning Enhances Enrollment Strategies
enroll ml uses advanced machine learning to provide deep, actionable insights that transform how admissions teams approach enrollment:
- Complex Pattern Identification: Analyzes diverse data points to uncover hidden patterns signaling a student’s likelihood to enroll, disengage, or require intervention.
- Daily Re-Scoring: Continuously updates student scores based on the latest data, enabling timely, data-driven decisions.
- Clear Funnel Prioritization: Simplifies complex data into actionable priorities, ensuring focused strategies on high-potential students and melt risks.
Outcome Optimization vs. Traditional Predictive Analytics
- View of the Student Journey: Traditional analytics have a fragmented, short-term focus, while enroll ml's Outcome Optimization takes a holistic, long-term approach to key moments.
- Identifying Opportunity and Risk: Traditional methods are reactive and spread efforts thin, whereas Outcome Optimization proactively prioritizes high-interest students.
- Consistency in Outcomes: Predictive models can be inconsistent and reactive to data changes; Outcome Optimization replicates proven behaviors for consistent results.
- Decision-Making Approach: Traditional analytics react to current data points, while Outcome Optimization anticipates and addresses future challenges.
- Focus on High-Value Activities: Traditional models dilute focus across numerous signals; Outcome Optimization concentrates on impactful actions.
- Ease of Implementation: Predictive analytics often require complex, frequent recalibrations, while Outcome Optimization simplifies by focusing on critical moments.
Why Outcome Optimization is Essential in Today's Enrollment Landscape
Enrollment management has evolved with efforts like the Common App and direct admit programs, reducing barriers but complicating predictive models. Here's why Outcome Optimization is needed:
- Dilution of Signals: Traditional indicators like campus visits now suggest less genuine interest due to easier application processes.
- Increase in Data ‘Noise’: A surge in low-intent applicants creates significant noise, making predictive models less accurate.
- Changing Student Behavior: Minimal effort in exploring options has shifted behavior from strong interest to casual exploration.
- Limitations of Traditional Models: Predictive models lose effectiveness deeper in the funnel; real-time engagement provides a clearer picture of intent.
- Need for Transparency: Students benefit from transparent, tailored communications aligned with their demonstrated interests, fostering a more connected enrollment journey.
When is Outcome Optimization Most Effective?
- Real-Time Decision Making: Traditional methods may suffice, but enroll ml’s approach offers a more strategic perspective.
- High-Frequency Low-Value Transactions: Predictive analytics can be useful, but Outcome Optimization focuses on high-impact actions.
- Complex Strategic Processes, Identifying Key Success Factors, Consistency Over Time, Resource-Constrained Environments, Long-Term Strategic Planning, Behavioral Change in Teams: All these areas benefit more from Outcome Optimization due to its strategic focus and ability to maintain consistent results.
Conclusion
While traditional predictive analytics remain critical for market understanding and investment decision-making, enroll ml's machine learning-driven Outcome Optimization is better equipped for the complexities of daily enrollment management. By offering a strategic, holistic view, reducing fragmented efforts, and consistently focusing on high-value activities, enroll ml helps admissions teams achieve more consistent and impactful enrollment execution and outcomes.
Understanding the theory behind enroll ml's machine learning driven outcome optimization
The next level of leveraging data to have a competitive advantage is not available as an export in your CRM. Indeed, an appropriate and intentional embrace of machine learning and artificial intelligence to identify and respond to student behavioral patterns is the next level.
It's Not An Export
Customizing Predictive Models for Unique Institutional Enrollment Patterns
Recently, enroll ml shared a whitepaper, “Harnessing the Power of Machine Learning in Enrollment Management” - sharing deep insights made available from our work studying thousands of behavioral markers of nearly one million students at dozens of institutions. Previous posts revealed three key breakthroughs and the impact of time-based behaviors, another element discussed in the whitepaper is the uniqueness of each institution’s ml model.
Every institution has unique enrollment patterns, and traditional profile-based prediction models often fail to capture these nuances. At enroll ml, we've found that customized predictive models, tailored to each institution's specific data and strategic priorities, can significantly enhance enrollment outcomes.
Uniqueness of Institutional Enrollment Signals
Machine learning models can be tailored to capture the specific dynamics of each institution's student population, far surpassing the capabilities of traditional models. Our analysis shows that engineered features derived from raw data through sophisticated transformations and combinations can provide nuanced insights into student behaviors and enrollment patterns.
For instance, the importance of different predictive features varies significantly across institutions. One institution might find that applicant characteristics are highly predictive, while another might prioritize academic interest data or system interaction behaviors. By customizing predictive models to align with these unique patterns, institutions can achieve more accurate predictions, optimize resource allocation, and implement more effective enrollment strategies.
Advantages of Customization
- Personalized Predictions: Machine learning models can reflect the specific enrollment dynamics of each institution, providing more personalized and accurate predictions than traditional methods.
- Enhanced Resource Allocation: Customization allows institutions to allocate resources more effectively, focusing efforts on high-impact activities and strategies.
- Nuanced Insights: Machine learning models offer detailed insights into student behaviors and decision-making processes, enabling institutions to develop more sophisticated enrollment strategies.
- Adaptability to Changing Environments: Machine learning models continuously learn and adapt to new data, ensuring they remain relevant and effective in evolving enrollment environments.
Conclusion
Customizing predictive models to reflect the unique enrollment patterns of each institution offers a significant advantage in optimizing enrollment outcomes. By leveraging machine learning for personalized predictions and strategic resource allocation, institutions can stay ahead in the competitive landscape of higher education.For comprehensive insights and strategic recommendations on how to customize predictive models for your institution, download our full whitepaper, "Harnessing the Power of Machine Learning in Enrollment Management."
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