Applicants for this year’s freshman class at Ithaca College didn’t
have to send their standardized test scores. If they did, the scores
were considered, but so were some surprising other factors — how many
friends and photos they had on social media, for instance.
The
same big data techniques that are transforming other industries are
seeping into the college and university admissions process to help
predict whether students will succeed and graduate.
“This is the
kind of stuff that savvy parents, students and college counselors know
about,” said Bruce Poch, dean of admission and executive director of
college counseling at the Chadwick School, a private school in Southern
California, and former dean of admissions at Pomona College.
The
point is simple: to increase graduation rates by using big data to
identify the kinds of students who, experience has proven, are most
likely to stick around.
Eric
Maguire, until recently vice president for enrollment and communication
at Ithaca, said using data as a part of the selection process has, in
fact, already bumped up the number of students who stay after their
freshman year. (Maguire is now vice president and dean of admission and
financial aid at Franklin & Marshall College.)
“The question
is, how do you recruit a set of students that will be successful at your
school?” said Katharine Frase, vice president and chief technology
officer for IBM’s unit focused on working with the public sector, which
produced the data analysis program used at Ithaca.
“When a student
doesn’t complete a degree, it is disruptive for everybody,” Frase said.
“The student has incurred debt and the school is left with a hole in
that class.”
Ithaca has been quietly collecting student social
media data since 2007, when it launched a Facebook-like website for
applicants called IC PEERS. The website gives applicants a chance to
connect with Ithaca faculty as well as each other.
Using an IBM
statistical analysis program, Yuko Mulugetta, Ithaca’s director of
enrollment planning and self-styled “in-house statistician,” studied
data collected from IC PEERS to see which students employing what
behaviors were most likely to enroll and stay at Ithaca — how many
photos they uploaded to their profiles, for instance, and how many IC
PEERS friends they made.
The idea is to learn how interested a candidate is in the college, Ithaca officials said.
The Big Brother approach to using data in this way is not without its critics.
“I
really didn’t think about how the school might use that information,
but I guess I was already through enough of the college admissions
process that I felt like all of my information was already with the
schools,” said Kelly Meehan, a rising sophomore music major at Ithaca
from Saratoga Springs, New York.
But Meehan worries that using IC
PEERS data could put students at a disadvantage who don’t have regular
access to the Internet or aren’t inclined to use social media.
Using
new forms of data collection and analysis is only likely to increase,
however, as universities and colleges are judged by everyone from
regulators to bond-rating agencies on their ability to attract students
and shepherd them to graduation.
“There’s an economic side to this
that’s unnerving,” said Poch, reflecting on the time he ran admissions
at Pomona. “I remember sitting down with bond raters from Standard &
Poor’s and Moody’s and them asking, ‘How many applications do you get
and what is your yield?’” — the proportion of accepted students who
enroll, a measure of demand.
“The more demand, the higher our bond
rating, and the lower our interest rates,” Poch said. “So a higher
yield meant saving millions of dollars a year in interest payments.”
David
Wright, chief data officer at Wichita State University, said his
colleagues and counterparts talk a lot about how to get the highest
yield at the lowest cost. At his school, Wright said, all potential
students are assigned a probability, from zero to 100 percent, of
whether they’ll enroll, based on factors such as sex, race, ethnicity,
test scores, high school grades and whether they’re the first in their
families to go to college. The university then focuses its recruiting
dollars on reaching the ones most likely to attend.
Like many other colleges and universities,
Wichita State also uses data to predict the likelihood of academic
failure among enrolled students. It gives that information to academic
advisers who suggest changes to a student’s schedule long before classes
start in the fall, in an effort to increase the student’s likelihood of
success and, ultimately, graduation, Wright said.
At
Sarah Lawrence College, Tom Blum, vice president of administration,
acknowledged that its use of big data is designed to increase yield
rates. He added, however, that “we do want to minimize instances where
we’ve admitted a student that probably wasn’t the best fit for us. How
interested an applicant was is heavily correlated with the student who
is going to be a good fit and stay on past the first year.”
He
said: “This isn’t rocket science. Those students get our open
curriculum, they get that we only have one major, they get that there’s a
focus on independent study. And the students that understand those
things and are excited about those things are the ones who are most
likely to stay.”
“We are small enough to get away with having
conversations about each applicant, we don’t use numerical formulas,”
said Blum. “But we do use all of the data to cross-check the human
process of building a class that is diverse and likely to show up and
stay around.”
(Pbs.org)
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