A Knowledge-Driven Approach to Classifying Object and Attribute
Coreferences in Opinion Mining
- URL: http://arxiv.org/abs/2010.05357v2
- Date: Sat, 17 Jul 2021 13:03:15 GMT
- Title: A Knowledge-Driven Approach to Classifying Object and Attribute
Coreferences in Opinion Mining
- Authors: Jiahua Chen and Shuai Wang and Sahisnu Mazumder and Bing Liu
- Abstract summary: This paper proposes an approach to automatically mine and leverage domain-specific knowledge for classifying objects and attribute coreferences.
The approach extracts domain-specific knowledge from unlabeled review data and trains a knowledgeaware neural coreference classification model.
Experimental evaluation on realworld datasets involving five domains (product types) shows the effectiveness of the approach.
- Score: 20.49474483102625
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Classifying and resolving coreferences of objects (e.g., product names) and
attributes (e.g., product aspects) in opinionated reviews is crucial for
improving the opinion mining performance. However, the task is challenging as
one often needs to consider domain-specific knowledge (e.g., iPad is a tablet
and has aspect resolution) to identify coreferences in opinionated reviews.
Also, compiling a handcrafted and curated domain-specific knowledge base for
each domain is very time consuming and arduous. This paper proposes an approach
to automatically mine and leverage domain-specific knowledge for classifying
objects and attribute coreferences. The approach extracts domain-specific
knowledge from unlabeled review data and trains a knowledgeaware neural
coreference classification model to leverage (useful) domain knowledge together
with general commonsense knowledge for the task. Experimental evaluation on
realworld datasets involving five domains (product types) shows the
effectiveness of the approach.
Related papers
- Learning to Discover Knowledge: A Weakly-Supervised Partial Domain Adaptation Approach [20.899013563493202]
Domain adaptation has shown appealing performance by leveraging knowledge from a source domain with rich annotations.
For a specific target task, it is cumbersome to collect related and high-quality source domains.
In this paper, we propose a simple yet effective domain adaptation approach, termed as self-paced transfer classifier learning (SP-TCL)
arXiv Detail & Related papers (2024-06-20T12:54:07Z) - INSURE: An Information Theory Inspired Disentanglement and Purification
Model for Domain Generalization [55.86299081580768]
Domain Generalization (DG) aims to learn a generalizable model on the unseen target domain by only training on the multiple observed source domains.
We propose an Information theory iNspired diSentanglement and pURification modEl (INSURE) to explicitly disentangle the latent features.
We conduct experiments on four widely used DG benchmark datasets including PACS, OfficeHome, TerraIncognita, and DomainNet.
arXiv Detail & Related papers (2023-09-08T01:41:35Z) - Knowledge-augmented Deep Learning and Its Applications: A Survey [60.221292040710885]
knowledge-augmented deep learning (KADL) aims to identify domain knowledge and integrate it into deep models for data-efficient, generalizable, and interpretable deep learning.
This survey subsumes existing works and offers a bird's-eye view of research in the general area of knowledge-augmented deep learning.
arXiv Detail & Related papers (2022-11-30T03:44:15Z) - Learning by Asking Questions for Knowledge-based Novel Object
Recognition [64.55573343404572]
In real-world object recognition, there are numerous object classes to be recognized. Conventional image recognition based on supervised learning can only recognize object classes that exist in the training data, and thus has limited applicability in the real world.
Inspired by this, we study a framework for acquiring external knowledge through question generation that would help the model instantly recognize novel objects.
Our pipeline consists of two components: the Object-based object recognition, and the Question Generator, which generates knowledge-aware questions to acquire novel knowledge.
arXiv Detail & Related papers (2022-10-12T02:51:58Z) - Scene Recognition with Objectness, Attribute and Category Learning [8.581276116041401]
Scene classification has established itself as a challenging research problem.
Image recognition serves as a key pillar for the good performance of scene recognition.
We propose a Multi-task Attribute-Scene Recognition network which learns a category embedding and at the same time predicts scene attributes.
arXiv Detail & Related papers (2022-07-20T19:51:54Z) - Contrastive Object Detection Using Knowledge Graph Embeddings [72.17159795485915]
We compare the error statistics of the class embeddings learned from a one-hot approach with semantically structured embeddings from natural language processing or knowledge graphs.
We propose a knowledge-embedded design for keypoint-based and transformer-based object detection architectures.
arXiv Detail & Related papers (2021-12-21T17:10:21Z) - Open Set Domain Recognition via Attention-Based GCN and Semantic
Matching Optimization [8.831857715361624]
This work presents an end-to-end model based on attention-based GCN and semantic matching optimization.
Experimental results validate that the proposed model not only has superiority on recognizing the images of known and unknown classes, but also can adapt to various openness of the target domain.
arXiv Detail & Related papers (2021-05-11T12:05:36Z) - A Quantitative Perspective on Values of Domain Knowledge for Machine
Learning [27.84415856657607]
Domain knowledge in various forms has been playing a crucial role in improving the learning performance.
We study the problem of quantifying the values of domain knowledge in terms of its contribution to the learning performance.
arXiv Detail & Related papers (2020-11-17T06:12:23Z) - Learning Cross-domain Generalizable Features by Representation
Disentanglement [11.74643883335152]
Deep learning models exhibit limited generalizability across different domains.
We propose Mutual-Information-based Disentangled Neural Networks (MIDNet) to extract generalizable features that enable transferring knowledge to unseen categorical features in target domains.
We demonstrate our method on handwritten digits datasets and a fetal ultrasound dataset for image classification tasks.
arXiv Detail & Related papers (2020-02-29T17:53:16Z) - Improving Domain-Adapted Sentiment Classification by Deep Adversarial
Mutual Learning [51.742040588834996]
Domain-adapted sentiment classification refers to training on a labeled source domain to well infer document-level sentiment on an unlabeled target domain.
We propose a novel deep adversarial mutual learning approach involving two groups of feature extractors, domain discriminators, sentiment classifiers, and label probers.
arXiv Detail & Related papers (2020-02-01T01:22:44Z) - Domain Adaption for Knowledge Tracing [65.86619804954283]
We propose a novel adaptable framework, namely knowledge tracing (AKT) to address the DAKT problem.
For the first aspect, we incorporate the educational characteristics (e.g., slip, guess, question texts) based on the deep knowledge tracing (DKT) to obtain a good performed knowledge tracing model.
For the second aspect, we propose and adopt three domain adaptation processes. First, we pre-train an auto-encoder to select useful source instances for target model training.
arXiv Detail & Related papers (2020-01-14T15:04:48Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.