aikasarjadataa
Aikasarjadataa, also known as time series data, refers to a sequence of data points collected at consistent intervals over time. This type of data is prevalent in various fields, including finance, meteorology, and engineering, where understanding trends, patterns, and anomalies is crucial. Time series data is characterized by its temporal ordering, which can reveal underlying structures such as seasonality, trends, and cyclical patterns.
The analysis of time series data typically involves several steps. First, data preprocessing is essential to
Modeling time series data involves selecting appropriate statistical or machine learning models. Traditional methods include autoregressive
Evaluation of time series models is crucial to assess their performance. Metrics such as mean absolute error
Applications of time series data analysis are vast. In finance, it is used for stock price prediction