Student Predictive Analytics Services docs

Todd Feathers filed this request with the Reading Area Community College of Reading, PA.

It is a clone of this request.

Est. Completion None
Status
No Responsive Documents

Communications

From: Todd Feathers

To Whom It May Concern:

Pursuant to the Pennsylvania Right to Know Act, I hereby request records related to student predictive analytics services used by the college.

For the purpose of this request, the term "student predictive analytics services" means software or computer code that employ machine learning models to generate predictions about individual students or groups of students for one or more of the following purposes:

a) To generate predictions about which prospective student names/contact information to buy from vendors such as the College Board, ACT, Cappex, etc. for advertising and recruiting.
b) To generate predictions about prospective students' likelihood to apply to, be admitted to, and/or enroll at the college.
c) To generate predictions about prospective students' financial aid needs and/or likely response to different financial aid packages.
d) To generate predictions about enrolled students' likelihood of passing a class, re-enrolling for another term (retention), and/or graduation (these tools are sometimes called early warning systems).

My request applies to student predictive analytics services used by the college during the 2022-23 academic year, including those developed in-house by the college or purchased from a vendor.

I request:

1) All contracts and statements of work between the college and outside parties for student predictive analytics services that the college used during the 2022-23 academic year.

2) Records defining the input variables and their weights/relative power for each student predictive analytics service the college used during the 2022-23 academic year (In other words, records defining the data points fed into each predictive model and their respective impacts on the model's output).

3) Records documenting the accuracy (AUC, true/false positive, specificity, lift, etc.) of each student predictive analytics service the college used during the 2022-23 academic year.

4) Any validation studies, disparate impact studies, or other records documenting differences in how the student predictive analytics services the college used during the 2022-23 academic year performed across student groups (e.g. Black students vs. White students, male students vs. female students).

I ask that all fees be waived as I am a journalist and intend to use the requested records to publish articles in the public interest about the operations of a government agency. If you choose to impose fees, I ask that you provide an explanation of the fees, including the hourly wage of the lowest-paid employee capable of fulfilling the request.

If you choose to reject this request or redact portions of responsive documents, I ask that you cite the statutory exemptions and associated case law underlying your decision to withhold each portion from public review.

The requested documents will be made available to the general public, and this request is not being made for commercial purposes.

In the event that there are fees, I would be grateful if you would inform me of the total charges in advance of fulfilling my request. I would prefer the request filled electronically, by e-mail attachment if available or CD-ROM if not.

Thank you in advance for your anticipated cooperation in this matter. I look forward to receiving your response to this request within 5 business days, as the statute requires.

Sincerely,

Todd Feathers

From: Reading Area Community College

Dear Mr. Feathers,

Date. Your Right to Know request to RACC, dated 09/05/23 and incorporated here-in by reference.

Request. You requested whether or not the College uses "student predictive analytics services" software or computer code that employ machine learning models to generate predictions about individual students or groups of students for one or more of the following purposes:

1. To generate predictions about which prospective student names/contact information to buy from vendors such as the College Board, ACT, Cappex, etc. for advertising and recruiting.
2. To generate predictions about prospective students' likelihood to apply to, be admitted to, and/or enroll at the college.
3. To generate predictions about prospective students' financial aid needs and/or likely response to different financial aid packages.
4. To generate predictions about enrolled students' likelihood of passing a class, re-enrolling for another term (retention), and/or graduation (these tools are sometimes called early warning systems).

Response: The College has not used predictive analytics services for the 2022-23 academic year, including those developed in-house by the College or purchased from a vendor. As a result, the College does not have any documentation to provide.

You have a right to appeal this determination in writing to Office of Open Records, 333 Market Street, 16th floor, Harrisburg, PA 17101. If you choose to file an appeal, you must do so within fifteen (15) business days of the mailing date of the agency’s response, as outlined in Section 1101 of the Right to Know Law.

Sincerely,

Cindy

[RACC Homepage]

Cynthia L. Urick, MA, CPSM
Purchasing Director & Open Records Officer

Reading Area Community College
10 South Second Street, PO Box 1706
Reading, PA 19603

610-372-4721 x5030
curick@racc.edu

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