Abstract:
This paper describes an upgraded version of the SemIndex prototype system for semantic-aware search in textual SQL databases. Semantic-aware querying has emerged as a required extension of the standard containment keyword-based query to meet user needs in textual databases and IR applications. Here, we build on top of SemIndex, a semantic-aware inverted index previously developed by our team, to allow semantic-aware search, result selection, and result ranking functionality. Various weighting functions and intelligent search algorithms have been developed for that purpose and will be presented here. A graphical interface was also added to help end-users write and execute queries. Preliminary experiments highlight SemIndex querying effectiveness and efficiency, considering different querying algorithms, different semantic coverages, and a varying number of query keywords.
Citation:
Tekli, J., Chbeir, R., Traina, A. J., Traina, C., Yetongnon, K., Ibanez, C. R., & Kallas, C. (2018, July). Upgraded semindex prototype supporting intelligent database keyword queries through disambiguation, query as you type, and parallel search algorithms. In 2018 IEEE International Conference on Cognitive Computing (ICCC) (pp. 33-40). IEEE.