two factors and the learning outcome, to capture
higher-order cognition participation in providing
insights. It will provide effective algorithms and
suggestions for online learning discussions. The
organizational structure of this article is as follows:
we review related works on discourse cognitive
behaviors, content, and behavior-topic models in
Section 2. The study design and methodology are
described in Section 3. The analysis results and
findings of the study are presented in Section 4.
Section 5 summarizes and discusses the findings of
this study.
2 RELATIONS WORKS
Interactive-Constructive-Active-Passive (ICAP) (Chi
& Wylie, 2014) framework presents a guide for
evaluating the cognitive engagement of contributions
within online communities. Although initially
developed to understand classroom conversational
data, this framework has also been proved to be
effective in online environments to understand
learners' cognitive participation, which has been
utilized within MOOC studies to measure the
association between course materials and discussion
contributions (Wang et al., 2015).
As an explicit form of learners' thinking and
knowledge processing, interactive discourse is an
essential basis for discriminating learners' cognitive
patterns, knowledge construction levels, and
independent inquiry ability (Wang et al., 2015).
SPOC, as a kind of restricted learning community,
has produced a large number of cognitive discourse
samples related to learning behaviors in its forum. It
is a crucial carrier reflecting the knowledge
construction, cognitive strategies, and interactive
quality of learners. A large number of studies have
laid the foundation for the analysis of cognitive
discourses in MOOC. For example, Wang et al.
(2015) adopted a content analysis approach to analyze
learners' cognitively appropriate behaviors in a
MOOC discussion forum and further explored the
relationship between the quantity and quality of that
participation with their learning gains. To interpret
what kind of discussion behaviors could help learners
from the semantic level. Wang et al. (2016) proposed
to trigger the cognitive behaviors of higher-order
thinking through ICAP cognitive coding scheme, and
found that learners who displayed more higher-order
thinking behaviors learned more through more in-
depth engagement with course materials posted by
their discussion behaviors. Moreover, many
researchers investigated the relationship between
cognitive behaviors and learning outcomes in terms
of quantitative and probabilistic models. Galikyan &
Admiraal. (2019) verified the effectiveness of
individual learner’s cognitive behaviors in predicting
learner’s learning effect through multiple regression
analysis in an asynchronous discussion community
and discussed the complex dynamics of knowledge
construction in pre-service teacher education.
Atapattu et al. (2019) proposed a fusion neural word
embedding (Doc2Vec) model to automatically
identify teachers' cognitive participation in MOOC
communities, such as active participation,
constructive participation, etc. They explored the
content of constructive cognitive involvement in 67
cases. Recently, some studies did excellent works in
modeling cognitive behavior from the perspective of
the topic model. For example, Qiu et al. proposed an
LDA-based (Blei, Ng, & Jordan, 2003) behavior-
topic model, which combined the users’ subject
interest and behavior patterns. They proved that the
model could obtain more dominant behavioral
indicators (Qiu, Zhu, & Jiang, 2013). Peng et al.
proposed Behavior Emotion Topic Model (BETM) to
detect reviews' semantic content between two
achievement groups (completers and non-
completers), the results showed that posting
comments is an essential behavior of the completers,
while replying and giving peer-review"praise"
arenecessary behaviors of the non-completers (Peng
& Xu, 2020). The above researches on behaviors and
discussion topics only focus on the semantic
modeling of shallow behaviors (such as approval,
replying, posting, and other discourse operations) and
seldom on the semantic modeling of the content of
discourse behaviors from the cognitive level. In
addition, the existing research has not explored the
relationship between cognitive behavior and learning
outcomes in the forum of hybrid courses, nor has it
used automated methods to analyze the impact of
discourse content themes and cognitive behavior on
learning outcomes. Thus, in order to fix the shortage
of automatic semantic analysis of discourse cognitive
behaviors in the field of learning analytics, we
propose the CBTM-based text mining method, which
not only models the semantic content with the topic
factors from the cognitive level of discourse
(compared with the shallow behavior of BETM,
CBTM is a discourse behaviors encoded by ICAP
framework), but also conducts a specific group
dialogue-oriented cognitive behavior analysis method
through topic probability modeling.