TY - JOUR
T1 - Combining Machine Learning and Semantic Web: A Systematic Mapping Study
AU - Breit, Anna
AU - Waltersdorfer, Laura
AU - Ekaputra, Fajar J.
AU - Sabou, Marta
AU - Ekelhart, Andreas
AU - Iana, Andreea
AU - Paulheim, Heiko
AU - Portisch, Jan
AU - Revenko, Artem
AU - Teije, Annette ten
AU - Harmalen, Frank van
PY - 2023/7/17
Y1 - 2023/7/17
N2 - In line with the general trend in artificial intelligence research to create intelligent systems that combine learning and symbolic components, a new sub-area has emerged that focuses on combining Machine Learning components with techniques developed by the Semantic Web community - Semantic Web Machine Learning (SWeML). Due to its rapid growth and impact on several communities in thepast two decades, there is a need to better understand the space of these SWeML Systems, their characteristics, and trends. Yet, surveys that adopt principled and unbiased approaches are missing. To fill this gap, we performed a systematic study and analyzed nearly 500 papers published in the past decade in this area, where we focused on evaluating architectural and application-specific features. Our analysis identified a rapidly growing interest in SWeML Systems, with a high impact on several application domains and tasks. Catalysts for this rapid growth are the increased application of deep learning and knowledge graph technologies. By leveraging the in-depth understanding of this area acquired through this study, a further key contribution of this article is a classification system for SWeML Systems that we publish as ontology.
AB - In line with the general trend in artificial intelligence research to create intelligent systems that combine learning and symbolic components, a new sub-area has emerged that focuses on combining Machine Learning components with techniques developed by the Semantic Web community - Semantic Web Machine Learning (SWeML). Due to its rapid growth and impact on several communities in thepast two decades, there is a need to better understand the space of these SWeML Systems, their characteristics, and trends. Yet, surveys that adopt principled and unbiased approaches are missing. To fill this gap, we performed a systematic study and analyzed nearly 500 papers published in the past decade in this area, where we focused on evaluating architectural and application-specific features. Our analysis identified a rapidly growing interest in SWeML Systems, with a high impact on several application domains and tasks. Catalysts for this rapid growth are the increased application of deep learning and knowledge graph technologies. By leveraging the in-depth understanding of this area acquired through this study, a further key contribution of this article is a classification system for SWeML Systems that we publish as ontology.
KW - Artificial Intelligence
KW - knowledge graph
KW - Knowledge Representation and Reasoning
KW - Machine Learning
KW - neuro-symbolic integration
KW - Semantic Web
KW - Systematic Mapping Study
UR - http://www.scopus.com/inward/record.url?scp=85152133927&partnerID=8YFLogxK
U2 - https://doi.org/10.1145/3586163
DO - https://doi.org/10.1145/3586163
M3 - Article
VL - 55
JO - ACM Computing Surveys (CSUR)
JF - ACM Computing Surveys (CSUR)
SN - 0360-0300
IS - 14 S
M1 - 313
ER -