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Non-parametric Algorithm to Isolate Chunks in Response Sequences

机译:用于隔离响应序列中块的非参数算法

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摘要

Chunking consists in grouping items of a sequence into small clusters, named chunks, with the assumed goal of lessening working memory load. Despite extensive research, the current methods used to detect chunks, and to identify different chunking strategies, remain discordant and difficult to implement. Here, we propose a simple and reliable method to identify chunks in a sequence and to determine their stability across blocks. This algorithm is based on a ranking method and its major novelty is that it provides concomitantly both the features of individual chunk in a given sequence, and an overall index that quantifies the chunking pattern consistency across sequences. The analysis of simulated data confirmed the validity of our method in different conditions of noise, chunk lengths and chunk numbers; moreover, we found that this algorithm was particularly efficient in the noise range observed in real data, provided that at least 4 sequence repetitions were included in each experimental block. Furthermore, we applied this algorithm to actual reaction time series gathered from 3 published experiments and were able to confirm the findings obtained in the original reports. In conclusion, this novel algorithm is easy to implement, is robust to outliers and provides concurrent and reliable estimation of chunk position and chunking dynamics, making it useful to study both sequence-specific and general chunking effects. The algorithm is available at: .
机译:分块包括将序列的项目分组为名为簇的小簇,其目标是减轻工作内存负荷。尽管进行了广泛的研究,但是用于检测组块以及识别不同组块策略的当前方法仍然不协调且难以实现。在这里,我们提出了一种简单可靠的方法来识别序列中的块并确定它们在块中的稳定性。该算法基于排序方法,其主要创新之处在于,它同时提供给定序列中单个块的特征以及量化整个序列中块模式一致性的整体索引。对模拟数据的分析证实了我们的方法在不同的噪声,块长度和块数条件下的有效性。此外,我们发现如果在每个实验模块中至少包含4个序列重复,则该算法在实际数据中观察到的噪声范围内特别有效。此外,我们将此算法应用于从3个已发表的实验中收集的实际反应时间序列,并能够确认原始报告中的发现。总而言之,这种新颖的算法易于实现,对异常值具有鲁棒性,并提供对块位置和块动力学的同时可靠的估计,这对于研究特定于序列的和一般的块效应都非常有用。该算法位于:。

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