Department of Computer Engineering2024-11-0920149.78194E+1210.3115/v1/S14-20112-s2.0-85122033302https://hdl.handle.net/20.500.14288/878In this paper, we describe our unsupervised method submitted to the Cross-Level Semantic Similarity task in Semeval 2014 that computes semantic similarity between two different sized text fragments. Our method models each text fragment by using the co-occurrence statistics of either occurred words or their substitutes. The co-occurrence modeling step provides dense, low-dimensional embedding for each fragment which allows us to calculate semantic similarity using various similarity metrics. Although our current model avoids the syntactic information, we achieved promising results and outperformed all baselines.pdfWord sense disambiguationNamed entityEntity linkingAI-KU: using co-occurrence modeling for semantic similarityConference proceedinghttps://doi.org/10.3115/v1/S14-2011N/ANOIR03426