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@INPROCEEDINGS{Barakat:902553,
author = {Barakat, Chadi and Riedel, Morris and Brynjolfsson, S. and
Cavallaro, Gabriele and Busch, Josefine and Sedona, Rocco},
title = {{D}esign and {E}valuation of an {HPC}-based {E}xpert
{S}ystem to speed-up {R}etail {D}ata {A}nalysis using
{R}esidual {N}etworks {C}ombined with {P}arallel
{A}ssociation {R}ule {M}ining and {S}calable {R}ecommenders},
reportid = {FZJ-2021-04354},
pages = {274 - 279},
year = {2021},
abstract = {Given the Covid-19 pandemic, the retail industry shifts
many business models to enable more online purchases that
produce large transaction data quantities (i.e., big data).
Data science methods infer seasonal trends about products
from this data and spikes in purchases, the effectiveness of
advertising campaigns, or brand loyalty but require
extensive processing power leveraging High-Performance
Computing to deal with large transaction datasets. This
paper proposes an High-Performance Computing-based expert
system architectural design tailored for ‘big data
analysis’ in the retail industry, providing data science
methods and tools to speed up the data analysis with
conceptual interoperability to commercial cloud-based
services. Our expert system leverages an innovative Modular
Supercomputer Architecture to enable the fast analysis by
using parallel and distributed algorithms such as
association rule mining (i.e., FP-Growth) and recommender
methods (i.e., collaborative filtering). It enables the
seamless use of accelerators of supercomputers or
cloud-based systems to perform automated product tagging
(i.e., residual deep learning networks for product image
analysis) to obtain colour, shapes automatically, and other
product features. We validate our expert system and its
enhanced knowledge representation with commercial datasets
obtained from our ON4OFF research project in a retail case
study in the beauty sector.},
month = {Sep},
date = {2021-09-27},
organization = {2021 44th International Convention on
Information, Communication and
Electronic Technology (MIPRO), Opatija
(Croatia), 27 Sep 2021 - 1 Oct 2021},
cin = {JSC},
cid = {I:(DE-Juel1)JSC-20090406},
pnm = {5112 - Cross-Domain Algorithms, Tools, Methods Labs (ATMLs)
and Research Groups (POF4-511) / EUROCC - National
Competence Centres in the framework of EuroHPC (951732) /
DEEP-EST - DEEP - Extreme Scale Technologies (754304)},
pid = {G:(DE-HGF)POF4-5112 / G:(EU-Grant)951732 /
G:(EU-Grant)754304},
typ = {PUB:(DE-HGF)8},
doi = {10.23919/MIPRO52101.2021.9596796},
url = {https://juser.fz-juelich.de/record/902553},
}