Date & time
10 a.m. – 12 p.m.
Severe weather Wednesday March 11: In-person activities are cancelled, faculty and staff are asked to work remotely.
Read moreSevere weather Wednesday March 11: In-person activities are cancelled, faculty and staff are asked to work remotely.
This event is free.
Online
Candidate: |
Mandana Mazaheri |
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Thesis Title: |
A Recommender System for Scientific Datasets & Analysis Pipelines |
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Date & Time: |
August 24th, 2021 @ 10:00 AM |
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Location: |
Zoom |
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Examining Committee: |
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Dr. Marta Kersten-Oertel |
(Chair) |
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Dr. Tristan Glatard |
(Supervisor) |
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Dr. Rene Witte |
(Examiner) |
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Dr. Marta Kersten-Oertel |
(Examiner) |
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Abstract: |
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Scientific datasets and analysis pipelines are increasingly being shared publicly in the interest of open science. However, mechanisms are lacking to reliably identify which pipelines and datasets can appropriately be used together. Given the increasing number of high-quality public datasets and pipelines, this lack of clear compatibility threatens the findability and reusability of these resources. We investigate the feasibility of a collaborative filtering system to recommend pipelines and datasets based on provenance records from previous executions. We evaluate our system using datasets and pipelines extracted from the Canadian Open Neuroscience Platform, a national initiative for open neuroscience. The recommendations provided by our system (AUC= 0:83) are significantly better than chance and outperform recommendations made by domain experts using their previous knowledge as well as pipeline and dataset descriptions (AUC= 0:63). In particular, domain experts often neglect low-level technical aspects of a pipeline-dataset interaction, such as the level of preprocessing, which are captured by a provenance-based system. We conclude that provenance-based pipeline and dataset recommenders are feasible and beneficial to the sharing and usage of open-science resources. Future work will focus on the collection of more comprehensive provenance traces, and on deploying the system in production.
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