Exploiting Definitions for Frame Identification
2021-04-01EACL 2021Code Available0· sign in to hype
Tianyu Jiang, Ellen Riloff
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- github.com/tyjiangu/fidoOfficialIn paperpytorch★ 3
Abstract
Frame identification is one of the key challenges for frame-semantic parsing. The goal of this task is to determine which frame best captures the meaning of a target word or phrase in a sentence. We present a new model for frame identification that uses a pre-trained transformer model to generate representations for frames and lexical units (senses) using their formal definitions in FrameNet. Our frame identification model assesses the suitability of a frame for a target word in a sentence based on the semantic coherence of their meanings. We evaluate our model on three data sets and show that it consistently achieves better performance than previous systems.