2019
DOI: 10.2991/ijcis.d.190627.001
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Semi-Automatic Generation of Competency Maps Based on Educational Data Mining

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Cited by 2 publications
(3 citation statements)
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“… Association rules as rule-based statements, that aim to find interesting relationships between data items in large datasets, were used in [108] to discover the relationships between answers to different test questions in order to be able to infer from them the relationships between competences in an educational area. In [28] a subtype of these, called Causal Data Mining, was used to find causal relationships between different events.…”
Section: Datasets and Toolsmentioning
confidence: 99%
See 1 more Smart Citation
“… Association rules as rule-based statements, that aim to find interesting relationships between data items in large datasets, were used in [108] to discover the relationships between answers to different test questions in order to be able to infer from them the relationships between competences in an educational area. In [28] a subtype of these, called Causal Data Mining, was used to find causal relationships between different events.…”
Section: Datasets and Toolsmentioning
confidence: 99%
“… Evaluation and validation: Rigorous evaluation of models and methods is essential to ensure that the results obtained are valid and reliable. However, there are cases where model validation is still subjective, with no metrics being used to assess the results obtained [108]. www.ijacsa.thesai.org  Prediction vs. interpretation: Another issue is the balance between creating accurate predictive models and understanding the reasons behind these predictions.…”
Section: Datasets and Toolsmentioning
confidence: 99%
“…Lytvynenko et al (2019a) 2019) learn a BN to analyze the variables that affect entrepreneurial intention and discover that the most important ones are self-efficacy, convenience, attitude, and social norm. Alfonso, Manjarrés and Pickin (2019) propose a semi-automatic method of educational competency maps from a repository of multiple-choice questionnaire answers. In Li and Liu (2018), a Dynamic Bayesian Network is used in conjunction with Wavelet decomposition to predict the path of a storm.…”
Section: Bayesian Network Structural Learning (Bnsl)mentioning
confidence: 99%