Provides over 250 statistical functions covering descriptive statistics, parametric and non-parametric tests, regression analysis, multivariate methods, time series forecasting, and machine learning algorithms all accessible through Excel's interface.
Fully integrates as an Excel ribbon tab with intuitive dialog boxes that guide users through analysis setup while keeping all data and results within Excel workbooks for easy manipulation and sharing.
Generates publication-quality charts, graphs, and plots including scatter plots, histograms, box plots, PCA biplots, and interactive 3D visualizations that can be customized and exported in various formats.
Includes supervised and unsupervised machine learning algorithms such as random forests, support vector machines, k-means clustering, and neural networks implemented specifically for Excel users without programming knowledge.
Provides complete Design of Experiments (DOE) functionality for planning experiments, analyzing results, and optimizing processes using factorial designs, response surface methodology, and mixture designs.
Includes comprehensive time series forecasting methods including ARIMA, exponential smoothing, seasonal decomposition, and spectral analysis with automatic model selection and diagnostic checking.
Students and researchers use XLSTAT to analyze experimental data for dissertations, journal articles, and research projects. The tool provides appropriate statistical tests for various study designs, generates publication-quality graphs, and produces comprehensive output with p-values, confidence intervals, and effect sizes. Researchers appreciate having all analysis within Excel where they can easily organize data, track changes, and integrate statistical results directly into their written work without switching between different software packages.
Business analysts employ XLSTAT for customer segmentation, conjoint analysis, survey data analysis, and sales forecasting. The software handles large datasets from CRM systems or surveys, applies clustering algorithms to identify customer segments, and uses regression models to predict market trends. Companies benefit from conducting sophisticated market research within their existing Excel-based workflows, allowing seamless integration with financial models and business reports while maintaining data consistency across departments.
Manufacturing and quality professionals utilize XLSTAT's statistical process control (SPC), design of experiments (DOE), and Six Sigma tools to monitor production processes, reduce variability, and optimize manufacturing parameters. The software generates control charts, performs capability analysis, and designs experiments to identify critical factors affecting product quality. This enables continuous improvement initiatives within Excel-based quality management systems without requiring specialized statistical software training for quality teams.
Medical researchers and healthcare analysts apply XLSTAT's survival analysis, logistic regression, and multivariate methods to clinical trial data, patient outcomes research, and epidemiological studies. The tool handles censored data for survival analysis, performs diagnostic test evaluation (sensitivity/specificity), and manages complex study designs. Healthcare institutions value maintaining patient data within secure Excel environments while accessing advanced biostatistical methods compliant with research standards.
Financial analysts use XLSTAT for time series forecasting, risk modeling, portfolio optimization, and credit scoring. The software applies ARIMA and exponential smoothing models to forecast financial metrics, uses Monte Carlo simulation for risk assessment, and implements classification algorithms for default prediction. Financial departments benefit from integrating advanced statistical forecasting with Excel-based financial models, ensuring consistency in assumptions and facilitating scenario analysis for decision-making.
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15Five operates in the people analytics and employee experience space, where platforms aggregate HR and feedback data to give organizations insight into their workforce. These tools typically support engagement surveys, performance or goal tracking, and dashboards that help leaders interpret trends. They are intended to augment HR and management decisions, not to replace professional judgment or context. For specific information about 15Five's metrics, integrations, and privacy safeguards, you should refer to the vendor resources published at https://www.15five.com.
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