DICoE@FinSim-3: Financial Hypernym Detection using Augmented Terms and Distance-based Features
Loukas, Lefteris, Bougiatiotis, Konstantinos, Fergadiotis, Manos, Mavroeidis, Dimitris, Zavitsanos, Elias
–arXiv.org Artificial Intelligence
We present the submission of team DICoE for FinSim-3, the 3rd Shared Task on Learning Semantic Similarities for the Financial Domain. The task provides a set of terms in the financial domain and requires to classify them into the most relevant hypernym from a financial ontology. After augmenting the terms with their Investopedia definitions, our system employs a Logistic Regression classifier over financial word embeddings and a mix of hand-crafted and distance-based features. Also, for the first time in this task, we employ different replacement methods for out-of-vocabulary terms, leading to improved performance. Finally, we have also experimented with word representations generated from various financial corpora. Our best-performing submission ranked 4th on the task's leaderboard.
arXiv.org Artificial Intelligence
Sep-30-2021
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