Of the general categories of methods mentioned,
prediction,
clustering and relationship mining are considered universal methods across all types of data mining; however,
Discovery with Models and
Distillation of Data for Human Judgment are considered more prominent approaches within educational data mining.
Discovery with models In the Discovery with Model method, a model is developed via prediction, clustering or by human reasoning
knowledge engineering and then used as a component in another analysis, namely in prediction and relationship mining. In the
prediction method use, the created model's predictions are used to predict a new
variable. For the use of
relationship mining, the created model enables the analysis between new predictions and additional variables in the study. In many cases, discovery with models uses validated prediction models that have proven generalizability across contexts. Key applications of this method include discovering relationships between student behaviors,
characteristics and contextual variables in the learning environment. Further discovery of broad and specific research questions across a wide range of contexts can also be explored using this method.
Distillation of data for human judgment Humans can make inferences about data that may be beyond the scope in which an automated
data mining method provides. For the use of education data mining, data is distilled for human judgment for two key purposes,
identification and
classification. For the purpose of
identification, data is distilled to enable humans to identify well-known patterns, which may otherwise be difficult to interpret. For example, the
learning curve, classic to educational studies, is a pattern that clearly reflects the relationship between learning and experience over time. Data is also
distilled for the purposes of
classifying features of data, which for educational data mining, is used to support the development of the prediction model. Classification helps expedite the development of the prediction model, tremendously. The goal of this method is to summarize and present the information in a useful,
interactive and visually appealing way in order to understand the large amounts of education data and to support
decision making. In particular, this method is beneficial to educators in understanding usage information and effectiveness in course activities. Key applications for the distillation of data for human judgment include identifying patterns in student learning, behavior, opportunities for
collaboration and labeling data for future uses in prediction models. ==Applications==