Each student has a Likelihood Score that estimates the probability they will ultimately enroll or be retained. Institutions may have events, actions, or programs designed to influence a student’s decision to enroll over another institution. The Recommendation 1 column in the grid view displays the single most significant event, action, or program impacting a student’s likelihood score, while the Recommendation 2 column displays the second most significant event, action, or program. The values in the recommendations columns utilize Othot's prescriptive analytics capabilities at the individual level.
The Recommendation 1 column is useful for segmenting students for specific events, programs, campaigns or additional financial aid offers. Applying a filter to the column with a selected action displays the students that would be most influenced by the selected recommendation.
A What-If analysis allows you to better allocate your financial or operational resources by helping you understand which actions are most impactful to meet your goals.
A Sensitivity Analysis allow you to understand how the likelihood of an individual or group of individuals to enroll might change at various levels of financial support. This is achieved using the Othot prediction combined with What-if capabilities. You can easily simulate the expected change in Likelihood Score.
The Matrix is a data-driven way to determine the optimal financial aid strategy that is expected to meet your institution's enrollment and strategic goals. Since Othot machine learning models understand the Sensitivity of institutional aid offers made to previously matriculated students, the platform is able to make offer amount decisions mathematically, then output a Matrix that is designed to yield the maximum expected enrollment for the lowest expected cost, all without sacrificing other strategic objectives.
The Objective section displays the optimal result for the goal that has been configured in the matrix template and compares it to the current value of the objective. Examples of possible Objectives may include:
The Constraints section displays the expected results based on the requirements that were set when the matrix was created. The expected result for each constraint is located between the minimum and maximum values that were configured for the matrix.
The matrix initially displays results with all grouping variables as rows. The values in the decision column are the financial offer amounts that the matrix determined would be optimal to reach the objective while meeting all constraints.
You can select a variable from the Primary Column drop-down to move it from rows to columns.
The Secondary Column adds the ability to see the expected enrollment or total record count next to each decision. This is useful for understanding the expected yield rate for each cell in the matrix.
You may find that the optimal decisions for increasing enrollment or maximizing net tuition revenue are not always the most practical for your institution. That's why any Decision value can be edited and made a different amount, then you can see what the new expected impact will be as a result of your changes.
Several features have been added that make testing and predicting the results of financial aid strategies a better and more comprehensive experience:
Clone Matrix Contents
Duplicating an existing Matrix now carries over all decision values from the source. This saves you time when making minor tweaks to an aid strategy while maintaining the insights from the original saved Matrix.
Show All Possible Aggregate Combinations
All combinations of variables used to group students in a Matrix now populate even if zero student records meet the criteria. This enables users to still select decision values for the subpopulations if a new student, who meets the aggregate combination, enters the funnel at a future date.
Financial Aid Decision Warnings
By request, a warning can be set to flag increases or decreases in financial aid awards that exceed desired levels for cells in a Matrix. This feature notifies institutions if they could be offering significantly different awards from the original award offer.
The Scenario module enables you to simulate what happens if multiple strategies are enacted, such as modifications to a financial aid strategy while also being more effective with marketing or recruitment activities by combining multiple Matrix and What-if simulations. This feature builds on Othot's prescriptive analytic capabilities to enable institutions to predict outcomes for situations before taking on any risk.
Any completed What-If or Matrix can be applied and stacked to show the predicted outcome if each of the selected tactics were applied.
Similar to a What-If, the What-If Score and Delta columns will appear for every record in the Grid of the Analyze page for a completed Scenario. See which students are predicted to be the most positively and negatively impacted by your potential decisions, including if a Matrix was adopted and applied.