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Proactive student support using artificially intelligent conversational chatbots: The importance of targeting the technology

We examine through a field experiment whether outreach and support provided through an AI-enabled chatbot can reduce summer melt and improve first-year college enrollment at a four-year university and at a community college. At the four-year college, the chatbot increased overall success with navigating financial aid processes, such that student take up of educational loans increased by four percentage points. This financial aid effect was concentrated among would-be first-generation college goers, for whom loan acceptances increased by eight percentage points. In addition, the outreach increased first-generation students’ success with course registration and fall semester enrollment each by three percentage points. For the community college, where the randomized experiment could not be robustly implemented due to limited cell phone number information, we present a qualitative analysis of organizational readiness for chatbot implementation. Together, our findings suggest that proactive outreach to students is likely to be most successful when targeted to those who may be struggling (for example, in keeping up with required administrative tasks). Yet, such targeting requires university systems to have ready access to and ability to make use of their administrative data.

Keywords
summer melt, artificial intelligence, chatbot, college access, student support
Education level
Document Object Identifier (DOI)
10.26300/mp4q-4x12
EdWorkingPaper suggested citation:
Nurshatayeva, Aizat, Lindsay C. Page, Carol C. White, and Hunter Gehlbach. (). Proactive student support using artificially intelligent conversational chatbots: The importance of targeting the technology . (EdWorkingPaper: -208). Retrieved from Annenberg Institute at Brown University: https://doi.org/10.26300/mp4q-4x12

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