Cross Sentence Inference for Process Knowledge

Samuel Louvan1, Chetan Naik1, Sadhana Kumaravel1, Heeyoung Kwon1, Niranjan Balasubramanian1, Peter Clark2
1Stony Brook University, 2Allen Institute for Artificial Intelligence


Abstract

For AI systems to reason about real world situations, they need to recognize which processes are at play and which entities play key roles in them. Our goal is to extract this kind of role-based knowledge about processes, from multiple sentence-level descriptions. This knowledge is hard to acquire; while semantic role labeling (SRL) systems can extract sentence level role information about individual mentions of a process, their results are often noisy and they do not attempt create a globally consistent characterization of a process.

To overcome this, we extend standard within sentence joint inference to inference across multiple sentences. This cross sentence inference promotes role assignments that are compatible across different descriptions of the same process. When formulated as an Integer Linear Program, this leads to improvements over within-sentence inference by nearly 3 % in F1. The resulting role-based knowledge is of high quality (with a F1 of nearly 82).