data collection instrument
used. In the
abstract submitted for this conference, an eye-tracking study is described. The main
advantage of eye-tracking is that it is an online, real-time measure that allows
researchers to capture learners’ eye
-
movements “during the uninterrupted processing of
the input” (Ro
berts & Siyanova-Chanturia, 2013, p. 213). By doing so, it enables us to
pinpoint learners’ focal attention on screen and study new types of research questions,
which largely evolve around the relation between attention, noticing, and learning. Yet,
there are also a number of limitations. These limitations are, for instance, situated at the
level of data collection and directly affect the number of participants involved in the study
(Winke, 2013). For instance, eye-calibration problems or glasses hinder accurate eye-
movement registration. Another challenge is related to the fact that eye-tracking does
not, by itself, shed light on learners’ cognitive processes. In other words, we know what
learners are focusing on, but eye-tracking does not reveal whether or how learners are
actively engaging with the input. That is why other types of instruments, such as
stimulated recall sessions, may need to be added in order to complement eye-movement
results. Yet, if we want to know how learners use with captions (Vanderplank, 2013),
eye-tracking is probably the most informative technique.
Finally, challenges are also at the level of
data analysis and data reporting
and
concern the choice of appropriate statistical data analysis techniques. If we want to take
into account the complexity of the construct and add elements that could not be
controlled for in the design (e.g. a target word’s frequency of occurrence, target word
length), analyses of (co-)variance may not be sufficient, even though they can be
considered the most frequently used techniques in studies focusing on second language
acquisition (Plonsky, 2013). Methods such as
generalised estimating equations
(e.g.
Hardin & Hilbe, 2003) and
mixed-effects modelling
(Baayen, 2008) may present a series
of benefits because they allow to take into account independent variables as well as a
series of learner- or item-related variables (e.g. Sonbul & Schmitt, 2013) that cannot be
included in, for instance, ANOVA analyses. However, it should be taken into account that
the complexity of multi-level techniques is not only challenging for the researcher but it
may also hamper the readers’ ease of reading and understanding.
In this paper, I have chosen to focus on four methodological challenges. Yet, while some
of the aspects may often be perceived and reported as study limitations, they also
challenge us to continuously improve research designs and go beyond easily available
options and solutions. In addition, these challenges present interesting ideas for new,
perhaps methodologically-oriented, research questions and studies.
-261-
2014 CALL Conference
LINGUAPOLIS
www.antwerpcall.be
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