TY - GEN
T1 - Knowledge is at the edge! How to search in distributed machine learning models
AU - Bach, Thomas
AU - Tariq, Muhammad Adnan
AU - Mayer, Ruben
AU - Rothermel, Kurt
N1 - Publisher Copyright:
© 2017, Springer International Publishing AG.
PY - 2017
Y1 - 2017
N2 - With the advent of the internet of things and industry 4.0 an enormous amount of data is produced at the edge of the network. Due to a lack of computing power, this data is currently send to the cloud where centralized machine learning models are trained to derive higher level knowledge. With the recent development of specialized machine learning hardware for mobile devices, a new era of distributed learning is about to begin that raises a new research question: How can we search in distributed machine learning models? Machine learning at the edge of the network has many benefits, such as low-latency inference and increased privacy. Such distributed machine learning models can also learn personalized for a human user, a specific context, or application scenario. As training data stays on the devices, control over possibly sensitive data is preserved as it is not shared with a third party. This new form of distributed learning leads to the partitioning of knowledge between many devices which makes access difficult. In this paper we tackle the problem of finding specific knowledge by forwarding a search request (query) to a device that can answer it best. To that end, we use a entropy based quality metric that takes the context of a query and the learning quality of a device into account. We show that our forwarding strategy can achieve over 95% accuracy in a urban mobility scenario where we use data from 30 000 people commuting in the city of Trento, Italy.
AB - With the advent of the internet of things and industry 4.0 an enormous amount of data is produced at the edge of the network. Due to a lack of computing power, this data is currently send to the cloud where centralized machine learning models are trained to derive higher level knowledge. With the recent development of specialized machine learning hardware for mobile devices, a new era of distributed learning is about to begin that raises a new research question: How can we search in distributed machine learning models? Machine learning at the edge of the network has many benefits, such as low-latency inference and increased privacy. Such distributed machine learning models can also learn personalized for a human user, a specific context, or application scenario. As training data stays on the devices, control over possibly sensitive data is preserved as it is not shared with a third party. This new form of distributed learning leads to the partitioning of knowledge between many devices which makes access difficult. In this paper we tackle the problem of finding specific knowledge by forwarding a search request (query) to a device that can answer it best. To that end, we use a entropy based quality metric that takes the context of a query and the learning quality of a device into account. We show that our forwarding strategy can achieve over 95% accuracy in a urban mobility scenario where we use data from 30 000 people commuting in the city of Trento, Italy.
KW - Distributed knowledge
KW - Knowledge retrieval
KW - Query routing
UR - http://www.scopus.com/inward/record.url?scp=85032691963&partnerID=8YFLogxK
U2 - 10.1007/978-3-319-69462-7_27
DO - 10.1007/978-3-319-69462-7_27
M3 - Conference contribution
AN - SCOPUS:85032691963
SN - 9783319694610
T3 - Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
SP - 410
EP - 428
BT - On the Move to Meaningful Internet Systems. OTM 2017 Conferences - Confederated International Conferences
A2 - Panetto, Herve
A2 - Paschke, Adrian
A2 - Meersman, Robert
A2 - Papazoglou, Mike
A2 - Debruyne, Christophe
A2 - Gaaloul, Walid
A2 - Ardagna, Claudio Agostino
PB - Springer Verlag
T2 - Confederated International Conference On the Move to Meaningful Internet Systems, OTM 2017 held in conjunction with Conferences on CoopIS, CandTC and ODBASE 2017
Y2 - 23 September 2017 through 27 September 2017
ER -