Description: Temporal Analysis Models in the Multimodal Models category are statistical and computational tools that allow for the examination and understanding of trends and patterns in data over time. These models integrate multiple data sources and variables, enabling them to capture the complexity of temporal phenomena. Through techniques such as regression, time series analysis, and machine learning, these models can identify relationships between different variables and forecast future behaviors. Their ability to handle heterogeneous data and their flexibility make them a valuable option for researchers and analysts across various disciplines. In a world where data is becoming increasingly abundant and complex, Temporal Analysis Models provide a robust approach to unraveling information and facilitating informed decision-making. These models are particularly useful in contexts where interactions between different modalities of data, such as text, images, and numbers, are relevant for analyzing trends over time.