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Main Authors: Bianchi, Andrea, d'Aloisio, Giordano, Marzi, Francesca, Di Marco, Antinisca
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2304.05767
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author Bianchi, Andrea
d'Aloisio, Giordano
Marzi, Francesca
Di Marco, Antinisca
author_facet Bianchi, Andrea
d'Aloisio, Giordano
Marzi, Francesca
Di Marco, Antinisca
contents Reproducibility is a crucial aspect of scientific research that involves the ability to independently replicate experimental results by analysing the same data or repeating the same experiment. Over the years, many works have been proposed to make the results of the experiments actually reproducible. However, very few address the importance of data reproducibility, defined as the ability of independent researchers to retain the same dataset used as input for experimentation. Properly addressing the problem of data reproducibility is crucial because often just providing a link to the data is not enough to make the results reproducible. In fact, also proper metadata (e.g., preprocessing instruction) must be provided to make a dataset fully reproducible. In this work, our aim is to fill this gap by proposing a decision tree to sheperd researchers through the reproducibility of their datasets. In particular, this decision tree guides researchers through identifying if the dataset is actually reproducible and if additional metadata (i.e., additional resources needed to reproduce the data) must also be provided. This decision tree will be the foundation of a future application that will automate the data reproduction process by automatically providing the necessary metadata based on the particular context (e.g., data availability, data preprocessing, and so on). It is worth noting that, in this paper, we detail the steps to make a dataset retrievable, while we will detail other crucial aspects for reproducibility (e.g., dataset documentation) in future works.
format Preprint
id arxiv_https___arxiv_org_abs_2304_05767
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle A Decision Tree to Shepherd Scientists through Data Retrievability
Bianchi, Andrea
d'Aloisio, Giordano
Marzi, Francesca
Di Marco, Antinisca
Digital Libraries
Reproducibility is a crucial aspect of scientific research that involves the ability to independently replicate experimental results by analysing the same data or repeating the same experiment. Over the years, many works have been proposed to make the results of the experiments actually reproducible. However, very few address the importance of data reproducibility, defined as the ability of independent researchers to retain the same dataset used as input for experimentation. Properly addressing the problem of data reproducibility is crucial because often just providing a link to the data is not enough to make the results reproducible. In fact, also proper metadata (e.g., preprocessing instruction) must be provided to make a dataset fully reproducible. In this work, our aim is to fill this gap by proposing a decision tree to sheperd researchers through the reproducibility of their datasets. In particular, this decision tree guides researchers through identifying if the dataset is actually reproducible and if additional metadata (i.e., additional resources needed to reproduce the data) must also be provided. This decision tree will be the foundation of a future application that will automate the data reproduction process by automatically providing the necessary metadata based on the particular context (e.g., data availability, data preprocessing, and so on). It is worth noting that, in this paper, we detail the steps to make a dataset retrievable, while we will detail other crucial aspects for reproducibility (e.g., dataset documentation) in future works.
title A Decision Tree to Shepherd Scientists through Data Retrievability
topic Digital Libraries
url https://arxiv.org/abs/2304.05767