Abstract

We advocate for and introduce LEARNSense, a framework for learning analytics using commodity wearable devices to capture learner’s physical actions and accordingly infer learner context (e.g., student activities and engagement status in class). Our work is motivated by the observations that: (a) the fine-grained individual-specific learner actions are crucial to understand learners and their context information; (b) sensor data available on the latest wearable devices (e.g., wrist-worn and eye wear devices) can effectively recognize learner actions and help to infer learner context information; (c) the commodity wearable devices that are widely available on the market can provide a hassle-free and non-intrusive solution. Following the above observations and under the proposed framework, we design and implement a sensor-based learner context collector running on the wearable devices. The latest data mining and sensor data processing techniques are employed to detect different types of learner actions and context information. Furthermore, we detail all of the above efforts by offering a novel and exemplary use case: it successfully provides the accurate detection of student actions and infers the student engagement states in class. The specifically designed learner context collector has been implemented on the commodity wrist-worn device. Based on the collected and inferred learner information, the novel intervention and incentivizing feedback are introduced into the system service. Finally, a comprehensive evaluation with the real-world experiments, surveys and interviews demonstrates the effectiveness and impact of the proposed framework and this use case. The F1 score for the student action classification tasks achieve 0.9, and the system can effectively differentiate the defined three learner states. Finally, the survey results show that the learners are satisfied with the use of our system (mean score of 3.7 with a standard deviation of 0.55).

Highlights

  • As a recently-emerging and fast-growing research field, learning analytics refers to “the measurement, collection, analysis and reporting of data about learners and their contexts” [1]

  • Novel framework for learning analytics: We propose a novel, but practical framework for learning analytics: it utilizes the fine-grained learner action sensing on the commodity wearable devices to provide learner context inference and build services for optimizing the learning process

  • Taking advantage of the vast amounts of data generated from heterogeneous sources in the educational space, learning analytics [1] has become a fast-growing field in recent years, which mainly focuses on understanding and analysis of data generated during the learning process [8]

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Summary

A Framework for Learning Analytics Using

Yu Lu 1,2, *, Sen Zhang 3 , Zhiqiang Zhang 4 , Wendong Xiao 3 and Shengquan Yu 1.

Introduction
Learning Analytics
Wearable Technology and Activity Recognition
Wearable Device System
Backend Server System
Smartphone System
Services for Learning and Teaching
Learner Context Collector Design
LCC Workflow
Data Preprocessing
Feature Extraction
Learner Context Inference
Trigger Mechanism
Exemplary Use Case
Problem Description
Hardware Selection
Basic Action Classification
Learner Context Inference Module
Backend Server System Implementation
LCC Evaluation
Context Inference Evaluation
Service Evaluation
Understanding Learner and Learner State
Current Limitations
Findings
Future Extensions
Conclusions
Full Text
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