64 research outputs found
Predictive Modelling Approach to Data-driven Computational Psychiatry
This dissertation contributes with novel predictive modelling approaches to data-driven
computational psychiatry and offers alternative analyses frameworks to the standard statistical
analyses in psychiatric research. In particular, this document advances research in
medical data mining, especially psychiatry, via two phases. In the first phase, this document
promotes research by proposing synergistic machine learning and statistical approaches
for detecting patterns and developing predictive models in clinical psychiatry
data to classify diseases, predict treatment outcomes or improve treatment selections. In
particular, these data-driven approaches are built upon several machine learning techniques
whose predictive models have been pre-processed, trained, optimised, post-processed
and tested in novel computationally intensive frameworks. In the second phase,
this document advances research in medical data mining by proposing several novel extensions
in the area of data classification by offering a novel decision tree algorithm,
which we call PIDT, based on parameterised impurities and statistical pruning approaches
toward building more accurate decision trees classifiers and developing new ensemblebased
classification methods. In particular, the experimental results show that by building
predictive models with the novel PIDT algorithm, these models primarily led to better
performance regarding accuracy and tree size than those built with traditional decision
trees. The contributions of the proposed dissertation can be summarised as follow.
Firstly, several statistical and machine learning algorithms, plus techniques to improve
these algorithms, are explored. Secondly, prediction modelling and pattern detection approaches
for the first-episode psychosis associated with cannabis use are developed.
Thirdly, a new computationally intensive machine learning framework for understanding
the link between cannabis use and first-episode psychosis was introduced. Then, complementary
and equally sophisticated prediction models for the first-episode psychosis associated
with cannabis use were developed using artificial neural networks and deep learning
within the proposed novel computationally intensive framework. Lastly, an efficient
novel decision tree algorithm (PIDT) based on novel parameterised impurities and statistical
pruning approaches is proposed and tested with several medical datasets. These contributions
can be used to guide future theory, experiment, and treatment development in
medical data mining, especially psychiatry
Analyzing Mediating Factors in Job Satisfaction Within the Retail Superstore Environment
Employee devotion to the organization is a key factor in determining whether an organization will succeed in the competitive market. Employee job satisfaction is therefore a critical factor. Employee satisfaction leads to full commitment and motivation to perform at their peak levels, enhancing customer value and advancing business goals. When employees receive enough compensation (salary, bonus, and provident fund), allowances, and insurance, as well as better working conditions, recognition for their efforts in the workplace, opportunities for training and development, and vacation benefits from their employer, they are satisfied with their jobs. The goal of the study is to identify the factors that influence an organization's employee job satisfaction. The article's objective is to quantify the degree to which the mediating factors have an impact on worker job satisfaction
Exploring Machine Learning Methods for IoT Network Intrusion Detection Systems
An ad hoc network is a transient network that is self-organizing and does not require any infrastructure. Therefore, the majority of its applications are in the field of military work and disaster assistance. Because of wireless connectivity and the ability to organize itself, ad hoc networks are becoming more common. Susceptible to a greater number of breaches or assaults than the conventional system. Blackhole assault is a significant routing disruption attack that a rogue node promotes itself as being capable of. as a step along the way to the final destination. In this research, we simulated a black hole using computer models. Assault in a setting with ad hoc networking, as well as data collection of important features for the purpose of classifying aggressive behaviour. Then, several different approaches to machine learning have been developed. utilized for the classification of information regarding benign and harmful packets. It seems to imply. a novel method for the selection of certain features, the gathering of crucial information, and the intrusion detection in an ad hoc network with the application of machine learning algorithms
Predicting First-Episode Psychosis Associated with Cannabis Use with Artificial Neural Networks and Deep Learning
In recent years, a number of researches started to investigate the existence of links between cannabis use and psychotic disorder. More recently, artificial neural networks and in particular deep learning have set a revolutionary wave in pattern recognition and machine learning. This study proposes a novel machine learning approach based on neural network and deep learning algorithms, to developing highly accurate predictive models for the onset of first-episode psychosis. Our approach is based also on a novel methodology of optimising and post-processing the predictive models in a computationally intensive framework. A study of the trade-off between the volume of the data and the extent of uncertainty due to missing values, both of which influencing the predictive performance, enhanced this approach. Furthermore, we extended our approach by proposing and encapsulating a novel post-processing k-fold cross-testing method in order to further optimise, and test these models. The results show that the average accuracy in predicting first-episode psychosis achieved by our models in intensive Monte Carlo simulation, is about 89%.</p
Secure Multi-Party Computation for Collaborative Data Analysis
A potent cryptographic mechanism called Secure Multi-Party Computation (SMPC) has evolved that allows numerous participants to work together and execute data analytic tasks while maintaining the privacy and secrecy of their individual data. In several fields, like healthcare, finance, and the social sciences, where numerous stakeholders must exchange and evaluate sensitive information without disclosing it to others, collaborative data analysis is becoming more and more common. This study gives a thorough investigation of SMPC for group data analysis. The main goal is to give a thorough understanding of the SMPC’s guiding ideas, protocols, and applications while stressing the advantages and difficulties it presents for fostering safe cooperation among various data owners. In summary, this study offers a thorough and current examination of Secure Multi-Party Computation for Collaborative Data examination. It provides a thorough grasp of the SMPC deployment issues as well as the underlying ideas, protocols, and applications. The goal of the article is to function as a useful resource for researchers, professionals, and decision-makers interested in using SMPC to facilitate group data analysis while protecting confidentiality and privacy
Quantum Computing: Algorithms,Architectures, and Applications
Cryptography, optimization, simulation, and machine learning are just a few of the industries that might be completely transformed by quantum computing. This abstract gives a thorough introduction to quantum computing with an emphasis on its algorithms, architectures, and applications. In conclusion, this abstract offers an in-depth analysis of quantum computing, including its algorithms, structures, and applications. It highlights the revolutionary potential of quantum computing in tackling difficult issues that are beyond the scope of conventional computers, laying the groundwork for further research and understanding of this quickly developing topic
Deep Learning Techniques for Image Recognition and Object Detection
Particularly in the fields of object identification and picture recognition, deep learning approaches have transformed the science of computer vision. This abstract provides a summary of recent developments and cutting-edge methods in deep learning for applications like object identification and picture recognition. The automated identification and classification of objects or patterns inside digital photographs is known as image recognition. Convolutional neural networks (CNNs), for example, have displayed outstanding performance in image identification tests. By directly learning hierarchical representations of visual characteristics from raw pixel data, these algorithms are able to recognize complex patterns and provide precise predictions. The ability for models to learn sophisticated visual representations straight from raw pixel data has transformed applications like object identification and picture recognition. The development of extremely accurate and effective systems has been accelerated by advances in deep learning architectures and large-scale annotated datasets. Further advances in object identification and picture recognition are anticipated as deep learning develops, with applications in a variety of fields including autonomous driving, surveillance, and medical imaging
Artificial Intelligence in Healthcare: Diagnosis, Treatment, and Prediction
One of the most potential uses of artificial intelligence (AI), which has changed a number of industries, is in healthcare. The application of AI in healthcare is discussed in general in this study, with an emphasis on diagnosis, treatment, and prediction. In the area of diagnostics, AI has proven to be remarkably adept at deciphering X-rays, CT scans, and MRI pictures to spot illnesses and anomalies. A branch of AI known as deep learning algorithms has shown to be particularly good at accurately identifying and categorizing medical disorders. Large volumes of imaging data may be swiftly analyzed by AI systems, enabling medical personnel to diagnose patients more accurately and with fewer mistakes. Additionally, AI may combine patient information, genetic data, and other pertinent data to produce tailored diagnostic suggestions. Consequently, AI has become a game-changing force in healthcare, especially in the disciplines of diagnosis, treatment, and prediction. AI systems can help medical personnel make more precise diagnoses, create individualized treatment plans, and forecast patient outcomes by utilizing machine learning algorithms and advanced data analytics. While there are still difficulties, there are enormous potential advantages for AI in healthcare, and coordinated efforts are required to realize these advantages and assure its ethical and fair incorporation into healthcare systems
Swarmic approach for symmetry detection of cellular automata behaviour
Since the introduction of cellular automata in the late 1940s they have been used to address various types of problems in computer science and other multidisciplinary fields. Their generative capabilities have been used for simulating and modelling various natural, physical and chemical phenomena. Besides these applications, the lattice grid of cellular automata has been providing a by-product interface to generate graphical contents for digital art creation. One important aspect of cellular automata is symmetry, detecting of which is often a difficult task and computationally expensive. In this paper a swarm intelligence algorithm—Stochastic Diffusion Search—is proposed as a tool to identify points of symmetry in the cellular automata-generated patterns
Machine Learning for Predictive Analytics in Social Media Data
Machine Learning (ML) has become a potent predictive analytics tool in several fields, including the study of social media data. Social media sites have developed into massive repositories of user-generated information, providing insightful data about user trends, interests, and behavior. This abstract emphasizes the use of machine learning methods for predictive analytics in social media data and examines the potential and problems unique to this field. Utilizing the capabilities of machine learning algorithms to identify significant trends and forecast user behavior from social media data is the goal of this study. The study makes use of a sizable dataset made up of user profiles, blog posts, comments, and engagement metrics gathered from well-known social networking sites. Predictive models are created using a variety of machine learning algorithms, such as ensemble methods, neural networks, decision trees, and support vector machines. As a result, this study emphasizes how important machine learning is for doing predictive analytics on social media data. The employment of diverse algorithms and preprocessing methods yields insightful information about user behavior and enables precise prediction of user behaviors. To improve the prediction powers of machine learning in this area, future research should concentrate on tackling the obstacles related to social media data, such as privacy concerns and data quality issues
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