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Beverly Park Woolf

Researcher at University of Massachusetts Amherst

Publications -  178
Citations -  5534

Beverly Park Woolf is an academic researcher from University of Massachusetts Amherst. The author has contributed to research in topics: TUTOR & Intelligent tutoring system. The author has an hindex of 38, co-authored 173 publications receiving 5200 citations.

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Building Intelligent Interactive Tutors: Student-centered Strategies for Revolutionizing E-learning

TL;DR: Building Intelligent Interactive Tutors discusses educational systems that assess a student's knowledge and are adaptive to a students' learning needs, and taps into 20 years of research on intelligent tutors to bring designers and developers a broad range of issues and methods that produce the best intelligent learning environments possible.
Proceedings ArticleDOI

Emotion Sensors Go To School

TL;DR: Evidence indicates that state-based fluctuating student emotions are related to larger, longer-term affective variables such as self-concept in mathematics, and by modifying the “context” of the tutoring system the system may well be able to optimize students' emotion reports and in turn improve math attitudes.
Journal ArticleDOI

Affect-aware tutors: recognising and responding to student affect

TL;DR: The goals are to redress the cognitive versus affective imbalance in teaching systems, develop tools that model student affect and build tutors that elicit, measure and respond to student affect.
Journal ArticleDOI

A Multimedia Adaptive Tutoring System for Mathematics that Addresses Cognition, Metacognition and Affect

TL;DR: A suite of effective strategies to support advanced personalized learning via an intelligent adaptive tutor that can be tailored to the individual needs, emotions, cognitive states, and metacognitive skills of learners are elucidated.
Proceedings Article

Inferring learning and attitudes from a Bayesian Network of log file data

TL;DR: This research evaluates the accuracy of a Bayesian Network to infer a student's hidden attitude toward learning, amount learned and perception of the system from log-data to develop tutors that self-improve their student models and their teaching.