Predicting Recall Probability to Adaptively Prioritize Study
نویسندگان
چکیده
Students have a limited time to study and are typically ineffective at allocating study time. Machine-directed study strategies that identify which items need reinforcement and dictate the spacing of repetition have been shown to help students optimize mastery (Mozer & Lindsey 2017). The large volume of research on this matter is typically conducted in constructed experimental settings with fixed instruction, content, and scheduling; in contrast, we aim to develop methods that can address any demographic, subject matter, or study schedule. We show two methods that model item-specific recall probability for use in a discrepancy-reduction instruction strategy. The first model predicts item recall probability using a multiple logistic regression (MLR) model based on previous answer correctness and temporal spacing of study. Prompted by literature suggesting that forgetting is better modeled by the power law than an exponential decay (Wickelgren 1974), we compare the MLR approach with a Recurrent Power Law (RPL) model which adaptively fits a forgetting curve. We then discuss the performance of these models
منابع مشابه
Reliability and Sensitivity Analysis of Structures Using Adaptive Neuro-Fuzzy Systems
In this study, an efficient method based on Monte Carlo simulation, utilized with Adaptive Neuro-Fuzzy Inference System (ANFIS) is introduced for reliability analysis of structures. Monte Carlo Simulation is capable of solving a broad range of reliability problems. However, the amount of computational efforts that may involve is a draw back of such methods. ANFIS is capable of approximating str...
متن کاملEvaluating the capabilities of Logistic Model Tree in predicting the occurrence probability of daily precipitation
Due to the location of Iran in arid and semi-arid regions and the inhomogeneous distribution of precipitation, predicting the occurrence of precipitation is important, therefore, researchers are implementing novel methods to identify and predict this parameter accurately. Thus the purpose of the current study is to investigate the capabilities of Logistic Model Tree (LMT) in predicting the occu...
متن کاملPredicting the Probability of Marital Infidelity based on Self-differentiation, Family Function & Couple Burnout
Aim: The purpose of this study was to investigate the probability of marital infidelity prediction based on the degree of self-differentiation, family function and couple burnout in couples living in city of Sanandaj, Iran. Methods: The research was fundamentally objective and in terms of the method of data collection, a descriptive type that was carried out in the form of a prediction correla...
متن کاملPredicting which words get recalled: measures of free recall, availability, goodness, emotionality, and pronunciability for 925 nouns.
To investigate the properties that make a word easy to recall, we added to existing norms for 925 nouns measures of availability, goodness, emotionality, pronunciability, and probability of recall in multiple-trial free recall. Availability, imagery, and emotionality were found to be the best predictors of which words were recalled. This result, which is stable across recall data collected in t...
متن کاملMin-d-Occur: Ensuring Future Occurrences in Streaming Sets
Given a set of n elements and a corresponding stream of its subsets, we consider the problem of selecting k elements that should appear in at least d such subsets arriving in the “near” future with high probability. For this min-doccur problem, we present an algorithm that provides a solution with the success probability of at least 1 − O ( kd logn D + 1 n ) , where D is a known constant. Our e...
متن کامل