'1e0a': A Computational Approach to Rhythm Training

09/09/2021
by   Noel Alben, et al.
0

We present a computational assessment system that promotes the learning of basic rhythmic patterns. The system is capable of generating multiple rhythmic patterns with increasing complexity within various cycle lengths. For a generated rhythm pattern the performance assessment of the learner is carried out through the statistical deviations calculated from the onset detection and temporal assessment of a learner's performance. This is compared with the generated pattern, and their performance accuracy forms the feedback to the learner. The system proceeds to generate a new pattern of increased complexity when performance assessment results are within certain error bounds. The system thus mimics a learner-teacher relationship as the learner progresses in their feedback-based learning. The choice of progression within a cycle for each pattern is determined by a predefined complexity metric. This metric is based on a coded element model for the perceptual processing of sequential stimuli. The model earlier proposed for a sequence of tones and non-tones, is now used for onsets and silences. This system is developed into a web-based application and provides accessibility for learning purposes. Analysis of the performance assessments shows that the complexity metric is indicative of the perceptual processing of rhythm patterns and can be used for rhythm learning.

READ FULL TEXT
research
12/16/2020

Show or Tell? Demonstration is More Robust to Changes in Shared Perception than Explanation

Successful teaching entails a complex interaction between a teacher and ...
research
06/09/2022

Analysis of Learner Independent Variables for Estimating Assessment Items Difficulty Level

The quality of assessment determines the quality of learning, and is cha...
research
04/20/2019

Self-imitating Feedback Generation Using GAN for Computer-Assisted Pronunciation Training

Self-imitating feedback is an effective and learner-friendly method for ...
research
07/20/2016

Compositional Sequence Labeling Models for Error Detection in Learner Writing

In this paper, we present the first experiments using neural network mod...
research
04/26/2023

Using Implicit Feedback to Improve Question Generation

Question Generation (QG) is a task of Natural Language Processing (NLP) ...
research
09/07/2022

Modelling Assessment Rubrics through Bayesian Networks: a Pragmatic Approach

Automatic assessment of learner competencies is a fundamental task in in...
research
07/02/2013

A Statistical Learning Theory Framework for Supervised Pattern Discovery

This paper formalizes a latent variable inference problem we call super...

Please sign up or login with your details

Forgot password? Click here to reset