DRIVE-T: A Methodology for Discriminative and Representative Data Viz Item Selection for Literacy Construct and Assessment
Angela Locoro, Silvia Golia, Davide Falessi

TL;DR
This paper introduces DRIVE-T, a methodology for selecting data visualization assessment items that effectively discriminate and represent different literacy levels, enhancing measurement expressivity and construct validity.
Contribution
DRIVE-T provides a systematic, multi-step approach for constructing and evaluating assessment items based on discriminability and representativeness, grounded in Rasch measurement and semiotics.
Findings
Successfully applied to an item bank for data visualization literacy
Identified difficulty levels aligned with semiotic knowledge components
Demonstrated the methodology's potential for formative assessment
Abstract
The underspecification of progressive levels of difficulty in measurement constructs design and assessment tests for data visualization literacy may hinder the expressivity of measurements in both test design and test reuse. To mitigate this problem, this paper proposes DRIVE-T (Discriminating and Representative Items for Validating Expressive Tests), a methodology designed to drive the construction and evaluation of assessment items. Given a data vizualization, DRIVE-T supports the identification of task-based items discriminability and representativeness for measuring levels of data visualization literacy. DRIVE-T consists of three steps: (1) tagging task-based items associated with a set of data vizualizations; (2) rating them by independent raters for their difficulty; (3) analysing raters' raw scores through a Many-Facet Rasch Measurement model. In this way, we can observe the…
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