20,884 research outputs found
Rude waiter but mouthwatering pastries! An exploratory study into Dutch aspect-based sentiment analysis
The fine-grained task of automatically detecting all sentiment expressions within a given document and the aspects to which they refer is known as aspect-based sentiment analysis. In this paper we present the first full aspect-based sentiment analysis pipeline for Dutch
and apply it to customer reviews. To this purpose, we collected reviews from two different domains, i.e. restaurant and smartphone reviews. Both corpora have been manually annotated using newly developed guidelines that comply to standard practices in the field. For our experimental pipeline we perceive aspect-based sentiment analysis as a task consisting of three main subtasks which have to be tackled incrementally: aspect term extraction, aspect category classification and polarity classification. First experiments on our Dutch restaurant corpus reveal that this is indeed a feasible approach that yields promising results
Basic tasks of sentiment analysis
Subjectivity detection is the task of identifying objective and subjective
sentences. Objective sentences are those which do not exhibit any sentiment.
So, it is desired for a sentiment analysis engine to find and separate the
objective sentences for further analysis, e.g., polarity detection. In
subjective sentences, opinions can often be expressed on one or multiple
topics. Aspect extraction is a subtask of sentiment analysis that consists in
identifying opinion targets in opinionated text, i.e., in detecting the
specific aspects of a product or service the opinion holder is either praising
or complaining about
Sentiment Analysis of Persian Language: Review of Algorithms, Approaches and Datasets
Sentiment analysis aims to extract people's emotions and opinion from their
comments on the web. It widely used in businesses to detect sentiment in social
data, gauge brand reputation, and understand customers. Most of articles in
this area have concentrated on the English language whereas there are limited
resources for Persian language. In this review paper, recent published articles
between 2018 and 2022 in sentiment analysis in Persian Language have been
collected and their methods, approach and dataset will be explained and
analyzed. Almost all the methods used to solve sentiment analysis are machine
learning and deep learning. The purpose of this paper is to examine 40
different approach sentiment analysis in the Persian Language, analysis
datasets along with the accuracy of the algorithms applied to them and also
review strengths and weaknesses of each. Among all the methods, transformers
such as BERT and RNN Neural Networks such as LSTM and Bi-LSTM have achieved
higher accuracy in the sentiment analysis. In addition to the methods and
approaches, the datasets reviewed are listed between 2018 and 2022 and
information about each dataset and its details are provided
Aspect-Based Sentiment Analysis using Machine Learning and Deep Learning Approaches
Sentiment analysis (SA) is also known as opinion mining, it is the process of gathering and analyzing people's opinions about a particular service, good, or company on websites like Twitter, Facebook, Instagram, LinkedIn, and blogs, among other places. This article covers a thorough analysis of SA and its levels. This manuscript's main focus is on aspect-based SA, which helps manufacturing organizations make better decisions by examining consumers' viewpoints and opinions of their products. The many approaches and methods used in aspect-based sentiment analysis are covered in this review study (ABSA). The features associated with the aspects were manually drawn out in traditional methods, which made it a time-consuming and error-prone operation. Nevertheless, these restrictions may be overcome as artificial intelligence develops. Therefore, to increase the effectiveness of ABSA, researchers are increasingly using AI-based machine learning (ML) and deep learning (DL) techniques. Additionally, certain recently released ABSA approaches based on ML and DL are examined, contrasted, and based on this research, gaps in both methodologies are discovered. At the conclusion of this study, the difficulties that current ABSA models encounter are also emphasized, along with suggestions that can be made to improve the efficacy and precision of ABSA systems
Arabic Opinion Mining Using a Hybrid Recommender System Approach
Recommender systems nowadays are playing an important role in the delivery of
services and information to users. Sentiment analysis (also known as opinion
mining) is the process of determining the attitude of textual opinions, whether
they are positive, negative or neutral. Data sparsity is representing a big
issue for recommender systems because of the insufficiency of user rating or
absence of data about users or items. This research proposed a hybrid approach
combining sentiment analysis and recommender systems to tackle the problem of
data sparsity problems by predicting the rating of products from users reviews
using text mining and NLP techniques. This research focuses especially on
Arabic reviews, where the model is evaluated using Opinion Corpus for Arabic
(OCA) dataset. Our system was efficient, and it showed a good accuracy of
nearly 85 percent in predicting rating from review
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