## Spatial Markov ### CDB_SpatialMarkovTrend(subquery text, column_names text array) This function takes time series data associated with geometries and outputs likelihoods that the next value of a geometry will move up, down, or stay static as compared to the most recent measurement. For more information, read about [Spatial Dynamics in PySAL](https://pysal.readthedocs.io/en/v1.11.0/users/tutorials/dynamics.html). #### Arguments | Name | Type | Description | |------|------|-------------| | subquery | TEXT | SQL query that exposes the data to be analyzed (e.g., `SELECT * FROM real_estate_history`). This query must have the geometry column name `the_geom` and id column name `cartodb_id` unless otherwise specified in the input arguments | | column_names | TEXT Array | Names of column that form the history of measurements for the geometries (e.g., `Array['y2011', 'y2012', 'y2013', 'y2014', 'y2015', 'y2016']`). | | num_classes (optional) | INT | Number of quantile classes to separate data into. | | weight type (optional) | TEXT | Type of weight to use when finding neighbors. Currently available options are 'knn' (default) and 'queen'. Read more about weight types in [PySAL's weights documentation](https://pysal.readthedocs.io/en/v1.11.0/users/tutorials/weights.html). | | num_ngbrs (optional) | INT | Number of neighbors if using k-nearest neighbors weight type. Defaults to 5. | | permutations (optional) | INT | Number of permutations to check against a random arrangement of the values in `column_name`. This influences the accuracy of the output field `significance`. Defaults to 99. | | geom_col (optional) | TEXT | The column name for the geometries. Defaults to `'the_geom'` | | id_col (optional) | TEXT | The column name for the unique ID of each geometry/value pair. Defaults to `'cartodb_id'`. | #### Returns A table with the following columns. | Column Name | Type | Description | |-------------|------|-------------| | trend | NUMERIC | The probability that the measure at this location will move up (a positive number) or down (a negative number) | | trend_up | NUMERIC | The probability that a measure will move up in subsequent steps of time | | trend_down | NUMERIC | The probability that a measure will move down in subsequent steps of time | | volatility | NUMERIC | A measure of the variance of the probabilities returned from the Spatial Markov predictions | | rowid | NUMERIC | id of the row that corresponds to the `id_col` (by default `cartodb_id` of the input rows) | #### Example Usage ```sql SELECT c.cartodb_id, c.the_geom, m.trend, m.trend_up, m.trend_down, m.volatility FROM CDB_SpatialMarkovTrend('SELECT * FROM nyc_real_estate' Array['m03y2009','m03y2010','m03y2011','m03y2012','m03y2013','m03y2014','m03y2015','m03y2016']) As m JOIN nyc_real_estate As c ON c.cartodb_id = m.rowid; ```