USDA Federal Research ARS ยท ERS ยท NASS โ€” Statistical economics data connected USDA Priority โ€” Agricultural Research Investment Economics
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SF16-E ยท Statistical Analysis Economics ยท Patent Pending US 63/970,943

๐Ÿ’ฐ Statistical Analysis Economics

Statistical decision economics, cost of experimentation modeling, variance reduction ROI, data collection cost-benefit, sampling efficiency analysis, and research investment optimization.

SF16-E.001 Decision EconomicsSF16-E.002 Experiment Cost ModelSF16-E.003 Variance Reduction ROISF16-E.004 Data Collection Cost-BenefitSF16-E.005 Sampling EfficiencySF16-E.006 Research Investment ROI
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Fetch Research Cost DataLoad experiment cost benchmarks & efficiency data
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ScienceSF16 ANOVA, regression & sampling science
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Chat ModeAI-guided calculation
📊 USDA Live Data — Research Costs & Commodity Benchmarks LIVE DATA Select source → auto-populate calculators
Fetch one source or load all at once
NASS Yields: not loaded | ERS Costs: not loaded | NIFA Benchmarks: not loaded
🌽 NASS Yields & Prices
💰 ERS Production Costs
🔬 NIFA Grant Benchmarks
🌽 USDA NASS — Crop Yields & Prices Received

Live commodity yields and prices. Auto-populates price and yield fields in trial economics calculators (SF16-E.003, SF16-E.006).

Select crop and year then click Load NASS.

Source: USDA NASS QuickStats API

💰 USDA ERS — Commodity Costs & Returns

ERS cost-of-production benchmarks. Auto-populates cost fields in SF16-E.001 and SF16-E.003.

Select crop and year then click Load ERS.

Source: USDA ERS Commodity Costs & Returns

🔬 USDA NIFA — Research Grant Benchmarks

USDA NIFA standard indirect rates, typical per-sample costs, and field trial cost benchmarks for grant budget development. Auto-populates SF16-E.001 cost fields.

Click Load NIFA Benchmarks to display grant budget standards.

Source: USDA NIFA Grants

💰 Research Grant & Sample Cost Budget

Model SF16-E.001

Calculates total research project cost using USDA NIFA budget structure: sample collection, laboratory analysis, data management, and indirect (F&A) costs. Outputs per-sample cost, per-treatment cost, and total project budget. Essential for USDA NIFA competitive grant budget justifications and ARS research project proposals.

USDA NIFA standard indirect rate typically 26% MTDC

📉 Statistical Power & Budget Trade-Off

Model SF16-E.002

Analyzes the economic cost of achieving different power levels. Compares cost of under-powered studies (Type II error losses) against the cost of additional replication. Identifies the economically optimal sample size that balances statistical rigor with budget constraints using USDA ARS 80% power standard.

Total cost per plot, tank, animal, or sample unit
Value of missed treatment effect: lost yield, missed publication, delayed decision

📊 Multi-Treatment ANOVA Trial Economics

Model SF16-E.003

Full economic analysis of a randomized complete block design (RCBD) field trial. Calculates total trial cost, minimum detectable difference (MDD), economic value of the MDD at market prices, and trial sensitivity rating. Standard USDA ARS field trial economic framework (Steel & Torrie 1980).

Typical: corn 8โ€“15%, soy 7โ€“14%, wheat 10โ€“18%

🔗 Regression Model Predictive Value

Model SF16-E.004

Quantifies the economic return from a calibrated regression model. Calculates annual value of RMSE reduction, break-even accuracy threshold, payback period, and 5-year ROI. Relevant for yield forecasting, input response modeling, and price prediction systems used in USDA ARS and land-grant university research programs.

Current prediction error without the model
Error with the regression model applied

🧪 Experimental Design Optimization

Model SF16-E.005

Compares CRD, RCBD, Latin Square, and split-plot designs on cost, power, and minimum detectable difference. Calculates cost per unit of statistical power for each design and identifies the most cost-efficient option within budget. Implements USDA ARS Biometrics Unit design efficiency standards.

💸 Publication & Research Impact ROI

Model SF16-E.006

Calculates return on investment from a completed statistical research study via extension adoption impact. Uses logistic diffusion adoption curve, yield improvement valuation across farm network, multi-year cumulative impact, and USDA NIFA benefit-cost ratio framework (OMB Circular A-4). For USDA ARS research program justification and NIFA impact reporting.

📊 About SF16-E — Statistical Analysis Economics

SF16-E provides 6 research economics models covering the full lifecycle of statistical research in agriculture: grant budget development (SF16-E.001), power-budget trade-off optimization (SF16-E.002), ANOVA field trial economics with MDD valuation (SF16-E.003), regression model predictive value and ROI (SF16-E.004), experimental design cost-efficiency comparison (SF16-E.005), and multi-year publication impact and benefit-cost analysis (SF16-E.006). All models apply USDA NIFA grant budget standards, USDA ERS cost-of-production benchmarks, USDA ARS Biometrics Unit design guidelines, and OMB Circular A-4 benefit-cost framework. Companion to SF16 Statistical Analysis Science Calculators.

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For Researchers & Extension Specialists
ROI-driven.
Decision-ready.
โœ“  Statistical decision modeling
โœ“  Experiment cost benchmarks
โœ“  Variance reduction ROI analysis
โœ“  Data collection cost-benefit
โœ“  Research investment optimization
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For Institutions & Enterprise
SF16-S ANOVA, regression & experimental design science
โœ“  Team collaboration & multi-user access
โœ“  API integration available
โœ“  Custom enterprise plans
โœ“  Patent Pending โ€” US App 63/970,943
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