Documentation

Everything you need to know about using MCP Analytics with Claude Desktop

Quick Start

Get up and running with MCP Analytics in minutes

Installation Guide

Set up Claude Desktop with MCP Analytics using our Auth0 connection

Get Started

First Analysis

Run your first statistical analysis using natural language commands

Learn How

Knowledge Base

Deep dive into statistical concepts and best practices

Browse Articles

Available Analyses

Extensive collection of statistical and machine learning tools at your fingertips

Linear Regression

Classic regression analysis with diagnostics and predictions

Regression

Ridge Regression

L2 regularized regression for multicollinearity

Regression

Lasso Regression

Feature selection with L1 regularization

Regression

Elastic Net

Combined L1 and L2 regularization

Regression

K-Means Clustering

Unsupervised clustering for segmentation

Machine Learning

Random Forest

Ensemble learning with decision trees

Machine Learning

XGBoost

Gradient boosting for high performance

Machine Learning

Logistic Regression

Binary and multinomial classification

Machine Learning

PCA

Dimensionality reduction and visualization

Machine Learning

Propensity Score Matching

Estimate treatment effects from observational data

Causal Inference

Synthetic Control

Create counterfactuals for policy evaluation

Causal Inference

Difference-in-Differences

Quasi-experimental design for causal effects

Causal Inference

Causal Impact

Bayesian time series causal analysis

Causal Inference

ARIMA

Time series forecasting with seasonality

Time Series

Prophet

Facebook's forecasting tool for business data

Time Series

VAR Model

Multivariate time series analysis

Time Series

T-Test

Compare means between two groups

Hypothesis Testing

ANOVA

Compare means across multiple groups

Hypothesis Testing

Chi-Square Test

Test independence of categorical variables

Hypothesis Testing

Bayesian A/B Testing

Probabilistic approach to experiment analysis

Hypothesis Testing

RFM Analysis

Customer segmentation by behavior

Customer Analytics

Customer LTV

Predict customer lifetime value

Customer Analytics

Correlation Analysis

Explore relationships between variables

Exploratory

Cox Regression

Survival analysis and hazard modeling

Survival

Price Elasticity

Measure demand sensitivity to price changes

Economics

Association Rules

Market basket analysis with Apriori algorithm

Association

Your First Analysis

Example conversation with Claude

You: "I have sales data with advertising spend and revenue. Can you help me understand
the relationship?"

Claude: I'll help you analyze the relationship between advertising spend and revenue
using linear regression. Let me run this analysis for you.

[Claude runs the analysis using MCP Analytics]

Claude: Here's what I found:
- Strong positive correlation (r=0.84) between ad spend and revenue
- Each $1,000 in advertising generates approximately $4,200 in revenue
- The model explains 71% of revenue variation (R² = 0.71)
- View the full interactive report: [link]

The analysis shows statistical significance (p < 0.001) and includes:
- Scatter plot with fitted line
- Residual diagnostics
- Confidence intervals
- Predictive capabilities

Would you like to explore specific segments or add more variables?

Ready to Start Analyzing?

Connect Claude Desktop to MCP Analytics and unlock powerful statistical capabilities