SentiQNF: A Novel Approach to Sentiment Analysis Using Quantum Algorithms and Neuro-Fuzzy Systems
- URL: http://arxiv.org/abs/2412.12731v2
- Date: Thu, 23 Jan 2025 09:53:47 GMT
- Title: SentiQNF: A Novel Approach to Sentiment Analysis Using Quantum Algorithms and Neuro-Fuzzy Systems
- Authors: Kshitij Dave, Nouhaila Innan, Bikash K. Behera, Zahid Mumtaz, Saif Al-Kuwari, Ahmed Farouk,
- Abstract summary: We propose a novel hybrid approach for sentiment analysis called the Quantum Fuzzy Neural Network (QFNN)
QFNN leverages quantum properties and incorporates a fuzzy layer to overcome the limitations of classical sentiment analysis algorithms.
The proposed approach expedites sentiment data processing and precisely analyses different forms of textual data.
- Score: 2.9565647484584496
- License:
- Abstract: Sentiment analysis is an essential component of natural language processing, used to analyze sentiments, attitudes, and emotional tones in various contexts. It provides valuable insights into public opinion, customer feedback, and user experiences. Researchers have developed various classical machine learning and neuro-fuzzy approaches to address the exponential growth of data and the complexity of language structures in sentiment analysis. However, these approaches often fail to determine the optimal number of clusters, interpret results accurately, handle noise or outliers efficiently, and scale effectively to high-dimensional data. Additionally, they are frequently insensitive to input variations. In this paper, we propose a novel hybrid approach for sentiment analysis called the Quantum Fuzzy Neural Network (QFNN), which leverages quantum properties and incorporates a fuzzy layer to overcome the limitations of classical sentiment analysis algorithms. In this study, we test the proposed approach on two Twitter datasets: the Coronavirus Tweets Dataset (CVTD) and the General Sentimental Tweets Dataset (GSTD), and compare it with classical and hybrid algorithms. The results demonstrate that QFNN outperforms all classical, quantum, and hybrid algorithms, achieving 100% and 90% accuracy in the case of CVTD and GSTD, respectively. Furthermore, QFNN demonstrates its robustness against six different noise models, providing the potential to tackle the computational complexity associated with sentiment analysis on a large scale in a noisy environment. The proposed approach expedites sentiment data processing and precisely analyses different forms of textual data, thereby enhancing sentiment classification and insights associated with sentiment analysis.
Related papers
- Nonlinear classification of neural manifolds with contextual information [6.292933471495322]
manifold capacity has emerged as a promising framework linking population geometry to the separability of neural manifold.
We propose a theoretical framework that overcomes this limitation by leveraging contextual input information.
Our framework's increased expressivity captures representation untanglement in deep networks at early stages of the layer hierarchy, previously inaccessible to analysis.
arXiv Detail & Related papers (2024-05-10T23:37:31Z) - Soft Random Sampling: A Theoretical and Empirical Analysis [59.719035355483875]
Soft random sampling (SRS) is a simple yet effective approach for efficient deep neural networks when dealing with massive data.
It selects a uniformly speed at random with replacement from each data set in each epoch.
It is shown to be a powerful and competitive strategy with significant and competitive performance on real-world industrial scale.
arXiv Detail & Related papers (2023-11-21T17:03:21Z) - BIDRN: A Method of Bidirectional Recurrent Neural Network for Sentiment
Analysis [0.0]
Deep Bidirectional Recurrent Neural Networks are used in this study to analyze sentiment.
This dataset can be used to train and evaluate sentiment analysis models capable of extracting impartial opinions.
arXiv Detail & Related papers (2023-11-13T12:36:53Z) - Convolutional Neural Networks for Sentiment Analysis on Weibo Data: A
Natural Language Processing Approach [0.228438857884398]
This study addresses the complex task of sentiment analysis on a dataset of 119,988 original tweets from Weibo using a Convolutional Neural Network (CNN)
A CNN-based model was utilized, leveraging word embeddings for feature extraction, and trained to perform sentiment classification.
The model achieved a macro-average F1-score of approximately 0.73 on the test set, showing balanced performance across positive, neutral, and negative sentiments.
arXiv Detail & Related papers (2023-07-13T03:02:56Z) - Quantifying uncertainty for deep learning based forecasting and
flow-reconstruction using neural architecture search ensembles [0.8258451067861933]
We present an automated approach to deep neural network (DNN) discovery and demonstrate how this may also be utilized for ensemble-based uncertainty quantification.
We highlight how the proposed method not only discovers high-performing neural network ensembles for our tasks, but also quantifies uncertainty seamlessly.
We demonstrate the feasibility of this framework for two tasks - forecasting from historical data and flow reconstruction from sparse sensors for the sea-surface temperature.
arXiv Detail & Related papers (2023-02-20T03:57:06Z) - Problem-Dependent Power of Quantum Neural Networks on Multi-Class
Classification [83.20479832949069]
Quantum neural networks (QNNs) have become an important tool for understanding the physical world, but their advantages and limitations are not fully understood.
Here we investigate the problem-dependent power of QCs on multi-class classification tasks.
Our work sheds light on the problem-dependent power of QNNs and offers a practical tool for evaluating their potential merit.
arXiv Detail & Related papers (2022-12-29T10:46:40Z) - Deep Architecture Connectivity Matters for Its Convergence: A
Fine-Grained Analysis [94.64007376939735]
We theoretically characterize the impact of connectivity patterns on the convergence of deep neural networks (DNNs) under gradient descent training.
We show that by a simple filtration on "unpromising" connectivity patterns, we can trim down the number of models to evaluate.
arXiv Detail & Related papers (2022-05-11T17:43:54Z) - DRFLM: Distributionally Robust Federated Learning with Inter-client
Noise via Local Mixup [58.894901088797376]
federated learning has emerged as a promising approach for training a global model using data from multiple organizations without leaking their raw data.
We propose a general framework to solve the above two challenges simultaneously.
We provide comprehensive theoretical analysis including robustness analysis, convergence analysis, and generalization ability.
arXiv Detail & Related papers (2022-04-16T08:08:29Z) - Data-driven emergence of convolutional structure in neural networks [83.4920717252233]
We show how fully-connected neural networks solving a discrimination task can learn a convolutional structure directly from their inputs.
By carefully designing data models, we show that the emergence of this pattern is triggered by the non-Gaussian, higher-order local structure of the inputs.
arXiv Detail & Related papers (2022-02-01T17:11:13Z) - Deep Representational Similarity Learning for analyzing neural
signatures in task-based fMRI dataset [81.02949933048332]
This paper develops Deep Representational Similarity Learning (DRSL), a deep extension of Representational Similarity Analysis (RSA)
DRSL is appropriate for analyzing similarities between various cognitive tasks in fMRI datasets with a large number of subjects.
arXiv Detail & Related papers (2020-09-28T18:30:14Z) - Can you tell? SSNet -- a Sagittal Stratum-inspired Neural Network
Framework for Sentiment Analysis [1.0312968200748118]
We propose a neural network architecture that combines predictions of different models on the same text to construct robust, accurate and computationally efficient classifiers for sentiment analysis.
Among them, we propose a systematic new approach to combining multiple predictions based on a dedicated neural network and develop mathematical analysis of it along with state-of-the-art experimental results.
arXiv Detail & Related papers (2020-06-23T12:55:02Z)
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.