SOTAVerified

KnowSemLM: A Knowledge Infused Semantic Language Model

2019-11-01CONLL 2019Unverified0· sign in to hype

Haoruo Peng, Qiang Ning, Dan Roth

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Story understanding requires developing expectations of what events come next in text. Prior knowledge -- both statistical and declarative -- is essential in guiding such expectations. While existing semantic language models (SemLM) capture event co-occurrence information by modeling event sequences as semantic frames, entities, and other semantic units, this paper aims at augmenting them with causal knowledge (i.e., one event is likely to lead to another). Such knowledge is modeled at the frame and entity level, and can be obtained either statistically from text or stated declaratively. The proposed method, KnowSemLM, infuses this knowledge into a semantic LM by joint training and inference, and is shown to be effective on both the event cloze test and story/referent prediction tasks.

Tasks

Reproductions