Data Normalization Contextualization

Interpretation

Data normalization contextualization involves interpreting transformed financial data within the specific market, asset, and time-series context from which it originated. This ensures that the normalized values, while scaled, retain their economic meaning and implications for trading decisions. Understanding the underlying distribution of raw data, such as cryptocurrency prices or options premiums, is essential for correctly interpreting the significance of normalized values. Misinterpreting context can lead to flawed model assumptions.