SOTAVerified

Fine-Grained Opinion Analysis

Fine-Grained Opinion Analysis aims to: (i) detect opinion expressions that convey attitudes such as sentiments, agreements, beliefs, or intentions, (ii) measure their intensity, (iii) identify their holders i.e. entities that express an attitude, (iv) identify their targets i.e. entities or propositions at which the attitude is directed, and (v) classify their target-dependent attitude.

( Image credit: SRL4ORL )

Papers

Showing 110 of 19 papers

TitleStatusHype
Opinion Mining Using Pre-Trained Large Language Models: Identifying the Type, Polarity, Intensity, Expression, and Source of Private StatesCode0
Fine-Grained Opinion Summarization with Minimal Supervision0
Mastering the Explicit Opinion-role Interaction: Syntax-aided Neural Transition System for Unified Opinion Role LabelingCode0
Syntax-Aware Opinion Role Labeling with Dependency Graph Convolutional Networks0
Enhancing Opinion Role Labeling with Semantic-Aware Word Representations from Semantic Role LabelingCode0
The 2018 Shared Task on Extrinsic Parser Evaluation: On the Downstream Utility of English Universal Dependency Parsers0
Recursive Neural Structural Correspondence Network for Cross-domain Aspect and Opinion Co-Extraction0
SRL4ORL: Improving Opinion Role Labeling using Multi-task Learning with Semantic Role LabelingCode0
Toward Stance Classification Based on Claim Microstructures0
Investigating LSTMs for Joint Extraction of Opinion Entities and Relations0
Show:102550
← PrevPage 1 of 2Next →

No leaderboard results yet.