3 June 2026

Mother Goose and Rikki-Tikki-Tavi secure software networks

Researchers have developed a new artificial intelligence-based system designed to improve cyberattack detection in software-defined networks (SDNs), a networking architecture widely used in data centres and enterprise systems.

The system combines a deep quantum neural network with a novel optimisation technique inspired by the behaviour of wild geese and dwarf mongooses. Its aim is to identify abnormal network traffic, including distributed denial-of-service (dDoS) attacks, while preventing network controllers from becoming overloaded.

SDNs differ from traditional networks by separating the control plane, which makes routing decisions, from the data plane, which forwards traffic. While this design improves flexibility and centralises management, it also creates potential targets for attackers seeking to disrupt communications between controllers and network devices.

In the new approach outlined in the International Journal of Heavy Vehicle Systems, network traffic is analysed using a deep quantum neural network, a machine-learning model designed to recognise complex patterns. When suspicious traffic is detected, the system assesses controller workloads and automatically transfers network switches from overloaded controllers to those with spare capacity.

In simulations, the researchers demonstrated a detection accuracy of 93.7%. They obtained a true positive rate of 91.6% and a true negative rate of 87.5%. The researchers argue that combining traffic anomaly detection with automated load balancing could strengthen increasingly centralised network infrastructures.

Ahsan Shariff, M. and Nelson Kennedy Babu, C. (2026) ‘Traffic anomaly detection with wild geese dwarf mongoose optimisation_DQNN’, Int. J. Heavy Vehicle Systems, Vol. 33, No. 2, pp.147–172.

2 June 2026

Research pick: Wear and tear it up the track - "Application of wearable motion tracking devices in training, monitoring, and evaluation"

Researchers have developed an enhanced wearable motion-tracking system that could improve the accuracy of fitness trackers used to monitor exercise and training. The team provides details in the International Journal of Data Mining and Bioinformatics.

Current wearable devices often show inconsistencies in heart-rate monitoring and can miscalculate calories burnt, speed, and distance travelled. Such inaccuracies limit their usefulness for health-conscious consumers, but particularly for athletes and their coaches who need precision.

The new work hopes to improve both data collection and sensor calibration. Researchers used fuzzy algorithms, computational methods designed to handle uncertain or variable information, to analyse real-time exercise data. They also applied filtering techniques to remove noise and improve data quality before calibrating the device’s sensors.

In their tests, they found that measurements of heart rate, calorie expenditure, movement speed, and distance closely matched those obtained through standard laboratory procedures. The researchers suggest that their main advance lies in combining improved sensor calibration with more sophisticated data processing. This allows the device to generate a more reliable picture of an athlete’s training performance in real time.

The findings could be used beyond competitive sport to help users develop personalised fitness programmes for health monitoring and injury prevention by giving them more dependable information about their physical activity.

Wu, F., Yang, S., Zhang, C. and Wu, H. (2026) ‘Application of wearable motion tracking devices in training, monitoring, and evaluation’, Int. J. Data Mining and Bioinformatics, Vol. 30, No. 6, pp.71–91.

Free Open Access issue published by International Journal of Procurement Management

The International Journal of Procurement Management has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.
  • Stakeholder engagement and sustainable procurement among multinational enterprises in developing countries: a case of Nigeria and Kenya
  • Innovation co-development forms in adapted, technological and experimental public procurement

1 June 2026

Free Open Access special issue on "Big Data Industrial Application and Computing Innovation – Part 1" published by International Journal of Data Mining and Bioinformatics

The International Journal of Data Mining and Bioinformatics has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.
  • Establishment of artificial intelligence pathological feature diagnosis model and molecular mechanism
  • Integrating data mining techniques for analysing implicit user behaviours in online courses
  • Dynamic load-balancing optimisation with bidirectional edge detection under multi-scale feature fusion
  • Application of wearable motion tracking devices in training, monitoring, and evaluation
  • Design of a multimodal information visualisation and analysis model based on improved graph embedding network
  • Nonlinear stress-strain prediction method for pipeline steel based on multi-scale adaptive network

Research pick: Can AI beat breast cancer? - "Establishment of artificial intelligence pathological feature diagnosis model and molecular mechanism"

An artificial intelligence (AI) system that combines breast cancer tissue images with molecular marker data achieves high accuracy in diagnosis, tumour classification, and survival prediction. Details are reported in the International Journal of Data Mining and Bioinformatics.

A common limitation of breast cancer care is that medical imaging and molecular markers as well as hormone receptor status are usually analysed separately. The researchers suggest that this can reduce the effectiveness of early detection, subtype classification, and personalised treatment planning. Their new addresses this issue.

In testing, the system achieved an accuracy of 96.3 per cent and an F1 score of 0.95, a measure that balances precision and recall. The system could also successfully classify eight breast cancer subtypes, with accuracy remaining above 90 per cent across all categories.

The approach combines two forms of AI. A Vision Transformer (ViT), a deep-learning model that identifies patterns across entire images, extracts features from biopsy slides. A fully connected neural network (FCNN) analyses molecular marker data. The resulting information is combined to give a clearer diagnosis.

The team says the method improves on many existing AI systems, which usually focus on image analysis and overlook molecular information that influences tumour behaviour and treatment response. The model also incorporates clinical data regarding survival trends and so can help support treatment decisions.

Zhang, Y., Zhang, Y., Xu, H. and Wang, Y. (2026) ‘Establishment of artificial intelligence pathological feature diagnosis model and molecular mechanism’, Int. J. Data Mining and Bioinformatics, Vol. 30, No. 6, pp.1–20.

Free Open Access issue published by International Journal of Information and Communication Technology

The International Journal of Information and Communication Technology has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.
  • Blockchain-enabled secure distance learning platforms for higher education
  • A neural network-based quality assessment model for English-to-Chinese text translation
  • Personalised learning path recommendation and knowledge tracing model for large-scale online education
  • Oil painting emotion recognition using multi-modal adaptive deep network
  • Generative adversarial network and grammar rule constraint optimisation for English interlanguage error correction

Free sample articles newly available from International Journal of Economics and Business Research

The following sample articles from the International Journal of Economics and Business Research are now available here for free:
  • The impact of investor sentiments on stock returns and volatility: do economic forces and herding behaviour matter?
  • Performance expectancy of generalised audit software: a developing country perspective
  • The impact of organisational structures on management compensation packages and investment decisions - a principal-agent approach investigating formula apportionment and separate accounting
  • The impact of economic policy uncertainty on the real exchange rate: evidence from the UK
  • Exploring UAE's female leadership styles in the digital era: motivators and barriers

Free Open Access issue published by International Journal of Economics and Business Research

The International Journal of Economics and Business Research has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.
  • Short-term financing structure and trade credit dynamics in an emerging market: a nonlinear perspective
  • Enhancing bank performance through loan performance: the role of technology and internal control in credit risk management in Vietnam
  • Non-performing loans and capital adequacy ratio in Vietnamese commercial banks: moderating effects of ownership structure - a dynamic GMM analysis

29 May 2026

Free sample articles newly available from International Journal of Monetary Economics and Finance

The following sample articles from the International Journal of Monetary Economics and Finance are now available here for free:
  • Stochastic dominance performance comparison of optimal fiat and cryptocurrency portfolios
  • Research on stock market anomalies: a systematic literature review, synthesis and framework for future research
  • Application of the modified organic benchmarks model in assessing performance of university endowment portfolios
  • Impact of Russia-Ukraine invasion on commodity prices in South Africa
  • A VAR analysis of the macroeconomic shocks on the non-performing loans ratio in Slovakia

Research pick: Keep to the beat - "An extraction method of pop music singing beats based on audio features"

A study in the International Journal of Computer Applications in Technology has developed an improved way to determine the underlying beat, or tempo, in recorded music. It addresses persistent issues in analysing modern popular music where vocals, multiple instruments, and background noise overlap. A beat is the regular pulse that structures rhythm and guides how music is perceived and organised in time. While humans detect it naturally, machines struggle when audio is complex or when tempo changes during a track.

Existing beat detection systems often perform well only under simplified conditions. Many rely on limited audio features or assume relatively clean recordings, making them less effective in real-world music. Even advanced machine learning approaches can be unstable when audio conditions vary and may require high computational power, limiting their use in real-time applications, where latency can be a serious problem in music production and recording.

The researchers have used a multifeature fusion approach, which combines multiple types of audio information instead of relying on a single signal. The system first pre-processes the audio by segmenting it, reducing noise, and normalising volume levels to ensure consistent input. It then tracks changes over time and the frequencies present.

Features such as short-term energy and zero-crossing rate help identify rhythmic changes, while additional analysis separates rhythmic structure from melody and harmony. These signals are combined into a unified model that detects repeating patterns corresponding to beats and adapts when tempo changes occur.

Tests show reduced missed beats and false detections compared with traditional methods. The approach could be used to improve music recommendation systems, automated accompaniment tools, performance synchronisation, and music education software.

Kong, Z. and Liu, G. (2026) ‘An extraction method of pop music singing beats based on audio features’, Int. J. Computer Applications in Technology, Vol. 78, No. 6, pp.1–10.

New Open Access article available: "Analysing student behaviour in the implementation of LAT using cloud technology in higher education institutions"

The following International Journal of Learning Technology article, "Analysing student behaviour in the implementation of LAT using cloud technology in higher education institutions", is freely available for download as an open access article.

It can be downloaded via the full-text link available here.

Free sample articles newly available from International Journal of Financial Services Management

The following sample articles from the International Journal of Financial Services Management are now available here for free:
  • Electronic mobile service quality and customer loyalty: the conditional indirect effect of relationship quality and customer satisfaction
  • Financial contagion and volatility spillover financial stock market: a statistical review of the literature
  • An empirical study on financial well-being during the COVID-19 in India

Free Open Access issue published by International Journal of Information and Communication Technology

The International Journal of Information and Communication Technology has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.
  • AI enabling mechanism of 'lighthouse factory' from the perspective of complex system theory
  • Design and development of mobile learning UI based on situational cognition theory
  • Research on intelligent generation and interactive display method of traditional art for immersive experience
  • Music generation controllable dance based on improved transformer model and style consistency
  • Design of a cross-domain resource integration learning path generation model for innovative talent cultivation using bi-directional GAN and deep contrastive clustering network

28 May 2026

Free Open Access issue published by International Journal of Business Innovation and Research

The International Journal of Business Innovation and Research has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.
  • Locus of control, moral awareness and gender in ethical decision-making: evidence from Syrian SMEs
  • How does innovative work behaviour mediate factors affecting social innovation behaviours in the UAE's public sector
  • Customer segmentation for marketing and business management in electronic retailing

Research pick: I’m UAV, fly me - "Time series data-driven UAV sensor attack detection: an adaptive graphtime-frequency hybrid approach"

A new machine learning framework designed to detect malicious interference in unmanned aerial vehicles (UAVs), commonly known as drones, has shown strong performance in identifying both sudden and slow-developing sensor attacks, according to research in the International Journal of Automation and Control. The system, called GTF-MAD (Graph Time-Frequency Mixed Anomaly Detection), achieved a peak F1-score of 99.71% in detecting bias in tests on a quadrotor drone.

UAVs depend on sensors such as GPS (which provides satellite-based location data) and gyroscopes (which measure rotation and orientation). These act as the drone’s navigational senses. However, they are vulnerable to manipulation. GPS spoofing can feed false location signals to a drone, while gyroscope bias injection introduces small but persistent errors into motion readings. Both can accumulate into major navigation failures if undetected.

Traditional detection systems rely on fixed rules, physical flight models, or machine learning patterns in sensor data. However, they struggle with changing sensor relationships during flight, lack of frequency-based signal analysis, and difficulty detecting slow-burn attacks that evolve over time.

GTF-MAD addresses these issues through three components. An adaptive graph attention network models sensors as a dynamic system of relationships that change during flight. A dual time-frequency architecture analyses signals both as time sequences and as frequency patterns, capturing vibrations and periodic disturbances. A trend detection module combines statistical methods to identify slow, stealthy deviations.

Chen, J., Zhou, Y. and Xue, X. (2026) ‘Time series data-driven UAV sensor attack detection: an adaptive graphtime-frequency hybrid approach’, Int. J. Automation and Control, Vol. 20, No. 7, pp.1–25.

Free sample articles newly available from International Journal of Trade and Global Markets

The following sample articles from the International Journal of Trade and Global Markets are now available here for free:
  • Emerging commodity-equity interdependencies: TVP-VAR analysis of oil, gold, and global stock markets
  • Divestment of state capital and stock price reaction: evidence from an emerging economy
  • Strategies for enhancing Gen Z employee retention in the BPO industry: a focus on organisational economic socialisation
  • Exploring consumer preferences for global brands in India's evolving food retail market: a trend analysis
  • The impact of investment on environmental quality: evidence from Indonesian Provinces

New Open Access article available: "Analysing the critical role of data governance in shaping Iraq's smart city future"

The following International Journal of Business Information Systems article, "Analysing the critical role of data governance in shaping Iraq's smart city future", is freely available for download as an open access article.

It can be downloaded via the full-text link available here.

Free Open Access issue published by International Journal of Information and Communication Technology

The International Journal of Information and Communication Technology has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.
  • Popular music accompaniment generation methods based on the MuseFlow model and sliding window design
  • Intelligent generation algorithm for digital image artworks based on decoupling representation and content-aware
  • Collaborative optimisation of emotion regulation and audio synthesis based on PerformanceNet and multi-emotional music generation model
  • Dynamic optimisation of the extraction process for natural food antioxidants based on multi-agent simulation
  • Faster R-BERT multimodal fusion real-time psychological stress recognition system

27 May 2026

Free Open Access issue published by International Journal of Information and Communication Technology

The International Journal of Information and Communication Technology has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.
  • Attentional dual-branch shallow feature enhancement and gated fusion for improved image copy-move forgery detection
  • Personalised learning path optimisation in digital English learning environments via multi-factor knowledge tracing and reinforcement learning
  • Computer vision simulation with multimodal data for real-time user interaction in industrial design
  • Simulating academic stress formation via causal discovery and temporal sequence analysis
  • Implicit neural representation and error control for solving mathematical partial differential equations

Research pick: International happiness - "Subjective wellbeing and behavioural preferences: evidence from global survey data"

A study covering 76 countries has found that people who are more trusting, patient, altruistic and cooperative tend to report higher levels of happiness and life satisfaction, suggesting that wellbeing depends on more than material prosperity alone. The work was published in the International Journal of Happiness and Development.

The research looked at behavioural preferences, stable patterns in how people make decisions and interact with others, and how these relate to subjective wellbeing. Subjective wellbeing is a metric that embodies both life satisfaction and emotional experiences such as happiness, enjoyment, and worry.

The researchers used data from the Global Preferences Survey and the Gallup World Poll They looked at five personality traits in the data: patience, risk-taking, reciprocity, altruism, and trust. The study combined survey responses with experimentally validated behavioural measures designed to reflect real-world behaviour, something that earlier studies had not generally done.

Across most countries and measures, stronger behavioural preferences were associated with higher wellbeing, the team found. People who were more trusting, altruistic, reciprocal and willing to take risks generally reported greater happiness and lower levels of worry.

What was particularly interesting about the findings is that there was consistency across different regions. Previous research on wellbeing has often focused on income, employment and health, mainly in wealthier countries. The new study suggests behavioural and social dispositions play an important role across cultures and economic systems in different parts of the world.

The team found that trust and reciprocity were especially important. They suggest that this is because cooperative societies foster stronger social bonds, and that reduces personal stress. Altruism may also improve wellbeing by increasing social connectedness and meaning. Patience may support healthier and more stable long-term choices, the team suggests.

It is worth adding that the findings are correlational rather than causal. The team cannot say whether the behavioural traits studied improve wellbeing or whether it is that happier people tend to become more trusting and altruistic.

Overdick, K. and De Neve, J-E. (2026) ‘Subjective wellbeing and behavioural preferences: evidence from global survey data’, Int. J. Happiness and Development, Vol. 10, No. 2, pp.140–171.

Free Open Access special issue on "Data Analysis and Data Mining for Knowledge Discovery: Part 1" published by International Journal of Computer Applications in Technology

The International Journal of Computer Applications in Technology has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.
  • Research on image enhancement of smart home product layout scene based on virtual reality
  • Zhongmei Liu
  • Study on 'Road to Waterway' model for medium to long-distance cargo transportation considering transportation efficiency
  • Research on multi-modal teaching resource association resource mining under MOOC ideological and political learning
  • Enhancing organisational efficiency using intelligent ERP decision
  • ST-LSTM-sports mind: a multimodal deep learning framework for intelligent sports analytics and automated journalism

New Open Access article available: "Subjective wellbeing and behavioural preferences: evidence from global survey data"

The following International Journal of Happiness and Development article, "Subjective wellbeing and behavioural preferences: evidence from global survey data", is freely available for download as an open access article.

It can be downloaded via the full-text link available here.

Free Open Access issue published by International Journal of Information and Communication Technology

The International Journal of Information and Communication Technology has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.
  • Computer music denoising and enhancement using dual-branch communication with spectral subtraction
  • Deep prediction of marine cultural and creative products purchase intentions by integrating visual significance and textual emotion
  • Discrete event simulation modelling for ceramic waste recycling using hybrid neural networks
  • Network traffic anomaly detection driven by bidirectional self-attention mechanism
  • Evaluation of cultural tourism short-video dissemination effectiveness based on a multimodal transformer

26 May 2026

Research pick: Substation zero - "Prediction of carbon emissions throughout the lifecycle of zero carbon substations based on Lasso-GRNN neural network model"

Artificial intelligence might now be used to address a less visible problem associated with renewable electricity production: the carbon footprint of the grid infrastructure itself. Details of how an AI-based forecasting system can predict the full lifecycle emissions of zero-carbon substations are provided in the International Journal of Business Intelligence and Data Mining. The approach is faster and more accurate than previous methods.

Substations convert high-voltage electricity into forms suitable for transmission and local distribution. Although often overlooked in climate debates, they generate emissions throughout construction, manufacturing, transport, maintenance, operation, and their decommissioning.

The study examines zero carbon substations, designed to minimise emissions through energy-efficient technologies, renewable integration, and offset measures such as carbon sinks. The researchers argue that only a full lifecycle perspective can properly assess their environmental impact, since supply chains and construction materials can account for substantial hidden emissions. Existing forecasting models, including deep reinforcement learning, recurrent neural networks, and random forest regression, usually cannot cope fully with the most important variables while maintaining speed and accuracy.

The new hybrid system, called Lasso-GRNN, combines statistical filtering with a neural network designed to model complex nonlinear relationships. Clustering techniques are also used to improve data quality before analysis.

The model achieves 98.51 per cent prediction accuracy with processing times of just 0.68 seconds. This could allow utility providers to make more timely and more informed infrastructure, maintenance, and investment decisions as electricity grids become increasingly decentralised and renewable focused.

Zeng, T., Chen, Y., Wang, L., Yuan, M., Lv, Z. and Wang, D. (2026) ‘Prediction of carbon emissions throughout the lifecycle of zero carbon substations based on Lasso-GRNN neural network model’, Int. J. Business Intelligence and Data Mining, Vol. 28, No. 8, pp.1–19.

New Open Access article available: "Time series data-driven UAV sensor attack detection: an adaptive graph-time-frequency hybrid approach"

The following International Journal of Automation and Control article, "Time series data-driven UAV sensor attack detection: an adaptive graph-time-frequency hybrid approach", is freely available for download as an open access article.

It can be downloaded via the full-text link available here.

Free Open Access special issue on "Dynamical Systems in the Era of Artificial Intelligence and Machine Learning: Theory, Applications and Innovations: Part 1" published by International Journal of Computer Applications in Technology

The International Journal of Computer Applications in Technology has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here
  • An extraction method of pop music singing beats based on audio features
  • Study on accurate prediction method for daily tourist flow in tourist attractions based on feature recursive elimination
  • Study on accurate perception for enterprise financial risk based on stacking ensemble learning
  • Customer churn prediction in e-commerce platforms using multi-feature fusion
  • Research on reliability assessment method for distributed distribution network power supply with self-healing performance
  • Study on high-frequency noise optimisation in analogue circuits under stochastic signal fluctuations
  • Deep interest fusion for cross-modal recommendation of English teaching resources
  • Line loss anomaly identification in power grids using grey wolf algorithm-optimised SVR
  • A study on the dynamic mining of English teaching resources using dynamic minimum support

Free Open Access issue published by International Journal of Information and Communication Technology

The International Journal of Information and Communication Technology has published an Open Access issue. All of the issue’s papers can be downloaded via the full-text links available here.

  • A cyber-physical system for AI-assisted ceramic design: framework and communication protocol for co-creation between artist and machine
  • Transformer-based real-time automatic error annotation for piano performance
  • Reengineering encryption via mathematical lattice constructs for quantum threat mitigation
  • AI-driven communication networks for real-time sports analytics and fan engagement in edge-IoT environments
  • Personalised news recommendation via dynamic-threshold federated reinforcement learning

New Open Access article available: "Applying the RBV theory to explore how fulfilment processes affect digital logistics performance in emerging economies"

The following International Journal of Services, Economics and Management article, "Applying the RBV theory to explore how fulfilment processes affect digital logistics performance in emerging economies", is freely available for download as an open access article.

It can be downloaded via the full-text link available here.