to i-tetu FEG Taiwan
Provide a URL to a web page, technical memorandum, or a paper.
No response.
Provide a general summary with relevant background information: Where does the method come from? Is it novel? Name the prior art.
Our entry comprised of two main steps. Firstly we separated the whole data set into 30 clusters according to the similarity of KC(R or S) name and then applied Rasch Model to estimate initial ability of each student. We then build of compound KC models to estimate the learning curves. Some variables like hint rate, difficulty prone of step within problems are computed as explanatory variable.
Summarize the algorithms you used in a way that those skilled in the art should understand what to do. Profile of your methods as follows:
Please describe your data understanding efforts, and interesting observations:
Details on feature generation:
Details on feature selection:
Details on latent factor discovery (techniques used, useful student/step features, how were the factors used, etc.):
Estimating the initial ability for each student in each unit. Taking the first time attempt answer result of each kcr(s) of each student as the input data, a one-parameter rasch model was performed to score the latent ability for each student.
More details on preprocessing:
Details on classification:
Details on model selection:
Scores shown in the table below are Cup scores, not leaderboard scores. The difference between the two is described on the Evaluation page.
A reader should also know from reading the fact sheet what the strength of the method is.
Please comment about the following:
Details on the relevance of the KC models and latent factors:
Details on software implementation:
SAS,R
Details on hardware implementation. Specify whether you provide a self contained-application or libraries.
Provide a URL for the code (if available):
List references below.