AIMS and SCOPES:

The aim of AASP is to publish original and high-quality research articles, reviews, and letters in all areas of statistics and probability. We welcome submissions in the following areas, among others:

  • Statistical theory: including probability theory, statistical inference, statistical modeling, and experimental design.
  • Statistical methods: including machine learning, Bayesian statistics, frequentist statistics, statistical computing, and data analysis.
  • Statistical applications: including econometrics, biostatistics, environmental statistics, social statistics, and big data.
  • Probability theory and methods: including stochastic processes, random matrices, Markov chains, and Monte Carlo methods.
  • Probability applications: including finance, insurance, engineering, physics, and biology.

All submissions are subject to a rigorous peer-review process, and we only accept articles that meet our high standards of quality and academic rigor. We also prioritize articles that have a clear and significant impact on the field, and that contribute to advancing our understanding of statistics and probability. AASP is committed to upholding the highest standards of ethical and academic integrity, and all authors are expected to adhere to our Code of Ethics and Code of Conduct.

Some possible keywords or sub-topics related to our aims and scopes are: statistical methodology, statistical software, data mining, statistical genetics, spatial statistics, time series analysis, causal inference, missing data, meta-analysis, Bayesian networks, computational statistics, statistical consulting, statistical education, statistical graphics, model selection, decision theory, statistical optimization, statistical quality control, statistical simulation, survey research, experimental statistics, reliability analysis, nonparametric statistics, multivariate analysis, statistical physics, statistical neuroscience, and statistical ecology.

As an open access journal, AASP is committed to making research freely and immediately available to readers around the world. We adhere to the Budapest Open Access Initiative, which means that all articles published in AASP are licensed under a Creative Commons Attribution License (CC-BY). This license allows readers to freely access, download, share, and reuse the articles, provided that proper attribution is given to the original authors and source of publication. We also provide transparent and detailed information about our article processing charges, which cover the costs of publication and editorial services, and are waived for authors from low- and middle-income countries.

AASP is committed to following best practices and guidelines for open access publishing, as set out by leading organizations such as the Directory of Open Access Journals (DOAJ) and the Committee on Publication Ethics (COPE). We strive to ensure that all articles published in AASP are of the highest quality and integrity, and that our editorial and review processes are transparent, fair, and unbiased. We also encourage authors to share their data and code, and to follow best practices for reproducible research.

In summary, Advances and Applications in Statistics and Probability is a high-quality, open access journal that aims to publish original and impactful research in all areas of statistics and probability. Our mission is to promote innovation and excellence in the field, foster a vibrant community of researchers, and provide a platform for open and transparent communication of research findings. Our vision is to become a leading journal in the field, known for publishing cutting-edge research that has a significant impact on theory, methods, and applications. We welcome submissions from researchers, practitioners, and students around the world, and are committed to upholding the highest standards of ethical and academic rigor.

Keywords/ Subtopics:

  • Statistical methodology
  • Probability theory
  • Statistical software
  • Data mining
  • Statistical genetics
  • Spatial statistics
  • Time series analysis
  • Causal inference
  • Missing data
  • Meta-analysis
  • Bayesian networks
  • Computational statistics
  • Statistical consulting
  • Statistical education
  • Statistical graphics
  • Model selection
  • Decision theory
  • Statistical optimization
  • Statistical quality control
  • Statistical simulation
  • Survey research
  • Experimental statistics
  • Reliability analysis
  • Nonparametric statistics
  • Multivariate analysis
  • Statistical physics
  • Statistical neuroscience
  • Statistical ecology
  • Statistical genetics
  • Statistical inference
  • Statistical modeling
  • Statistical computing
  • Statistical graphics
  • Statistical learning
  • Applied statistics
  • Mathematical statistics
  • Stochastic processes
  • Econometrics
  • Time series econometrics
  • Financial econometrics
  • Bayesian statistics
  • Nonlinear regression
  • Spatial econometrics
  • Multilevel modeling
  • Markov chain Monte Carlo
  • Survival analysis
  • Robust statistics
  • Machine learning
  • Deep learning
  • Neural networks
  • Big data analytics
  • High-dimensional data analysis
  • Cluster analysis
  • Discriminant analysis
  • Factor analysis
  • Principal component analysis
  • Canonical correlation analysis
  • Correspondence analysis
  • Data visualization
  • Data exploration
  • Hypothesis testing
  • Confidence intervals
  • Statistical significance
  • Type I error
  • Type II error
  • Power analysis
  • Effect size estimation
  • Goodness of fit tests
  • Multivariate analysis of variance
  • Analysis of covariance
  • Experimental design
  • Clinical trials
  • Sample size determination
  • Survey sampling
  • Probability distributions
  • Normal distribution
  • Binomial distribution
  • Poisson distribution
  • Exponential distribution
  • Gamma distribution
  • Beta distribution
  • Chi-square distribution
  • Student's t-distribution
  • F-distribution
  • Copula models
  • Time-varying parameter models
  • Structural equation models
  • Quantile regression
  • Support vector machines
  • Bayesian model averaging
  • Latent variable models
  • Model-based clustering
  • Gaussian processes
  • Hidden Markov models
  • Decision trees
  • Random forests
  • Boosting
  • Bagging
  • Ensemble learning
  • Multiclass classification
  • Imputation methods
  • Exploratory factor analysis
  • Confirmatory factor analysis
  • Item response theory
  • Structural equation modeling
  • Network analysis
  • Social network analysis
  • Latent class analysis
  • Time series forecasting
  • Seasonal time series
  • Longitudinal data analysis
  • Panel data analysis
  • Generalized linear models
  • Generalized linear mixed models
  • Zero-inflated models
  • Bayesian hierarchical models
  • Spatial autoregressive models
  • Spatial point processes
  • Kernel density estimation
  • Survival regression
  • Cox regression
  • Accelerated failure time models
  • Multistate models
  • Dirichlet processes
  • Stochastic volatility models
  • Multilevel factor analysis
  • Structural equation modeling with latent variables
  • Multinomial logistic regression
  • Analysis of large-scale data
  • Functional data analysis
  • Spectral analysis
  • Wavelet analysis
  • Empirical Bayes methods
  • Multivariate time series analysis
  • High-dimensional inference
  • Robustness in statistical modeling
  • Data-driven decision making
  • Machine learning algorithms for statistical analysis
  • Statistical inference for complex networks
  • Model-based inference for non-standard data structures
  • Bayesian inference for complex models
  • Nonparametric regression models
  • Multivariate nonparametric regression
  • Nonparametric classification methods
  • Bayesian optimization
  • Multi-objective optimization
  • Sensitivity analysis
  • Spatial clustering
  • Spatial interpolation
  • Spatial prediction
  • Spatio-temporal modeling
  • Time series clustering
  • Quantitative risk assessment
  • Reliability analysis of complex systems
  • Statistical process control
  • Quality control methods for complex data structures
  • Uncertainty quantification
  • Statistical physics modeling
  • Applied probability theory
  • Statistical learning theory
  • Big data analytics for decision making
  • Network analysis for complex systems
  • Multidimensional scaling
  • Mixture models
  • Hidden variable models
  • Independent component analysis
  • Multiple imputation
  • Text mining
  • Image analysis
  • Audio analysis
  • Video analysis
  • Web analytics
  • Computational linguistics
  • Natural language processing
  • Sentiment analysis
  • Customer segmentation
  • Data-driven marketing
  • Online advertising optimization
  • Pricing optimization
  • Supply chain optimization
  • Inventory optimization
  • Machine learning for fraud detection
  • Machine learning for credit scoring
  • Machine learning for predictive maintenance
  • Machine learning for recommendation systems
  • Machine learning for medical diagnosis
  • Machine learning for drug discovery
  • Machine learning for image recognition
  • Machine learning for speech recognition
  • Machine learning for robotics
  • Machine learning for autonomous vehicles
  • Machine learning for renewable energy
  • Deep reinforcement learning
  • Generative adversarial networks
  • Explainable artificial intelligence
  • Fairness in machine learning
  • Privacy-preserving machine learning
  • Federated learning
  • Transfer learning
  • Active learning
  • Semi-supervised learning
  • Self-supervised learning
  • Multi-task learning
  • Unsupervised learning
  • Artificial intelligence in finance
  • Artificial intelligence in healthcare
  • Artificial intelligence in transportation
  • Artificial intelligence in energy
  • Artificial intelligence in agriculture
  • Artificial intelligence in manufacturing
  • Artificial intelligence in education
  • Artificial intelligence in cybersecurity
  • Artificial intelligence in social media analysis
  • Artificial intelligence in journalism
  • Artificial intelligence in customer service
  • Artificial intelligence in gaming
  • Artificial intelligence in sports analytics
  • Artificial intelligence in the arts
  • Natural language processing in finance
  • Natural language processing in healthcare
  • Natural language processing in customer service
  • Natural language processing in social media analysis
  • Natural language processing in journalism
  • Natural language processing in legal document analysis
  • Natural language processing in scientific literature analysis
  • Natural language processing in the arts
  • Digital image processing in healthcare
  • Digital image processing in scientific research
  • Digital image processing in art conservation
  • Digital image processing in engineering
  • Digital image processing in quality control
  • Digital image processing in security and surveillance
  • Digital image processing in entertainment
  • Audio analysis in healthcare
  • Audio analysis in speech recognition
  • Audio analysis in music recommendation systems