Title :
Multi-Aspect Rating Inference with Aspect-Based Segmentation
Author :
Jingbo Zhu ; Chunliang Zhang ; Ma, M.Y.
Author_Institution :
Key Lab. of Med. Image Comput., Northeastern Univ., Shenyang, China
Abstract :
This paper explores the problem of content-based rating inference from online opinion-based texts, which often expresses differing opinions on multiple aspects. To sufficiently capture information from various aspects, we propose an aspect-based segmentation algorithm to first segment a user review into multiple single-aspect textual parts, and an aspect-augmentation approach to generate the aspect-specific feature vector of each aspect for aspect-based rating inference. To tackle the problem of inconsistent rating annotation, we present a tolerance-based criterion to optimize training sample selection for parameter updating during the model training process. Finally, we present a collaborative rating inference model which explores meaningful correlations between ratings across a set of aspects of user opinions for multi-aspect rating inference. We compared our proposed methods with several other approaches, and experiments on real Chinese restaurant reviews demonstrated that our approaches achieve significant improvements over others.
Keywords :
inference mechanisms; information services; learning (artificial intelligence); text analysis; user interfaces; Chinese restaurant review; aspect-augmentation approach; aspect-based rating inference; aspect-based segmentation algorithm; aspect-specific feature vector; collaborative rating inference model; content-based rating inference; model training process; multiaspect rating inference; multiple single-aspect textual part; online opinion-based text; parameter update; rating annotation; tolerance-based criterion; training sample selection; user opinion; Collaboration; Content management; Emotion recognition; Ethics; Inference algorithms; Prediction algorithms; Sentiment analysis; aspect-based segmentation; collaborative rating inference; content-based rating inference;
Journal_Title :
Affective Computing, IEEE Transactions on
DOI :
10.1109/T-AFFC.2012.18