TY - JOUR
T1 - Knowledge graph embeddings
T2 - Open challenges and opportunities
AU - Biswas, Russa
AU - Kaffee, Lucie-Aimée
AU - Cochez, Michael
AU - Dumbrava, Stefania
AU - Jendal, Theis E
AU - Lissandrini, Matteo
AU - Lopez, Vanessa
AU - Mencía, Eneldo Loza
AU - Paulheim, Heiko
AU - Sack, Harald
AU - Vakaj, Edlira Kalemi
AU - de Melo, Gerard
PY - 2023/12/19
Y1 - 2023/12/19
N2 - While Knowledge Graphs (KGs) have long been used as valuable sources of structured knowledge, in recent years, KG embeddings have become a popular way of deriving numeric vector representations from them, for instance, to support knowledge graph completion and similarity search. This study surveys advances as well as open challenges and opportunities in this area. For instance, the most prominent embedding models focus primarily on structural information. However, there has been notable progress in incorporating further aspects, such as semantics, multi-modal, temporal, and multilingual features. Most embedding techniques are assessed using human-curated benchmark datasets for the task of link prediction, neglecting other important real-world KG applications. Many approaches assume a static knowledge graph and are unable to account for dynamic changes. Additionally, KG embeddings may encode data biases and lack interpretability. Overall, this study provides an overview of promising research avenues to learn improved KG embeddings that can address a more diverse range of use cases.
AB - While Knowledge Graphs (KGs) have long been used as valuable sources of structured knowledge, in recent years, KG embeddings have become a popular way of deriving numeric vector representations from them, for instance, to support knowledge graph completion and similarity search. This study surveys advances as well as open challenges and opportunities in this area. For instance, the most prominent embedding models focus primarily on structural information. However, there has been notable progress in incorporating further aspects, such as semantics, multi-modal, temporal, and multilingual features. Most embedding techniques are assessed using human-curated benchmark datasets for the task of link prediction, neglecting other important real-world KG applications. Many approaches assume a static knowledge graph and are unable to account for dynamic changes. Additionally, KG embeddings may encode data biases and lack interpretability. Overall, this study provides an overview of promising research avenues to learn improved KG embeddings that can address a more diverse range of use cases.
UR - https://hal.science/hal-04373217
U2 - 10.4230/TGDK.1.1.4
DO - 10.4230/TGDK.1.1.4
M3 - Journal article
VL - 1
JO - Transactions on Graph Data and Knowledge (TGDK)
JF - Transactions on Graph Data and Knowledge (TGDK)
IS - 1
ER -