111 research outputs found
Extracting more meaning from CAA results using machine learning
This work describes a novel approach to the problem of extracting knowledge from the results obtained via a CAA system by adopting a Machine Learning paradigm.
The basic idea guiding our research was to investigate the existence of association rules among the topics covered in a course. The data used came from the exams administered to the freshmen in electronic engineering attending the course of Foundation of Computer Science at the University of Ancona. Ten Multiple Choice Questions with four possible answers constituted an exam. Questions have been classified according to the topic covered in a taxonomy derived from the course syllabus. Each question has an absolute weight representing its relative importance inside the curriculum. The data have been filtered by removing low-end and high-end achievers to obtain a subset containing information free from border effects. Each questionnaire has been coded into a vector of features (one for each element of the questionsâ taxonomy) representing the studentâs answers (right, wrong, not given). The feature vectors are further classified with respect to the final score obtained by the student (poor, average or good) and analysed using C4.5, a classification system based on top-down induction of decision trees that allows generating production rules.
We classified the generated rules into three categories: âstraightforwardâ, âreasonableâ and âunexplainableâ. Rules are considered âstraightforwardâ when they put in relation topics that we believe are related. âReasonableâ rules put in relation topics that although not being predictable by our experience, may be understood after a deeper analysis of the questions. âUn-explainableâ rules put in relation topics that do not appear to be related in any way.
A first interesting result of the method discussed is represented by the so-called âreasonable rulesâ that may be used to better tune the teaching of the topics that appear to be related
Lucrezio, de rer. nat. IV 984: voluntas o voluptas? Una difficoltĂ testuale e l'interpretazione epicureo-lucreziana del fenomeno onirico (prima parte)
Il lavoro Ăš stato pubblicato in due parti. Nel pdf Ăš inclusa anche la seconda parte, uscita nella medesima annata della rivista alle pp. 208-253. La questione testuale, risolta a favore di voluntas, viene collocata nel contesto della psicologia epicureo-lucreziana, in particolare per ciĂČ che riguarda il fenomeno onirico; si comincia dallâesame del IV libro di Lucrezio, per proseguire con lo studio del concetto di voluntas (non esclusivamente in Lucrezio); si prosegue con i presupposti nella dottrina di Epicuro, recuperati anche attraverso Diogene di Enoanda. Abitudine e volontĂ si rivelano aspetti fondamentali nellâinterpretazione epicureo-lucreziana del sogno, non senza alcuni riscontri, specialmente nella scuola peripatetica (ma anche nella dottrina medica di Erofilo), e alcuni rilevanti esiti successivi (Agostino)
Diff. gramm., VII, 522, 16 Keil (= Char. gramm. (?), p. 391, 14 s. Barw.): una correzione necessaria
recensione a "Philip Thibodeau, Playing the Farmer: Representations of Rural Life in Vergil's Georgics, Berkeley, Los Angeles, London, UCP, 2011"
Discussione del volume, in particolare per la necessitĂ di un maggior coinvolgimento del modello esiodeo
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