--- layout: page title: "Bayesian Binary Sensor" description: "Instructions on how to integrate threshold Bayesian sensors into Home Assistant." date: 2017-08-27 20:05 sidebar: true comments: false sharing: true footer: true logo: home-assistant.png ha_category: Utility ha_iot_class: "Local Polling" ha_release: 0.53 ha_qa_scale: internal --- The `bayesian` binary sensor platform observes the state from multiple sensors and uses [Bayes' rule](https://en.wikipedia.org/wiki/Bayes%27_theorem) to estimate the probability that an event has occurred given the state of the observed sensors. If the estimated posterior probability is above the `probability_threshold`, the sensor is `on` otherwise it is `off`. This allows for the detection of complex events that may not be readily observable, e.g., cooking, showering, in bed, the start of a morning routine, etc. It can also be used to gain greater confidence about events that _are_ directly observable, but for which the sensors can be unreliable, e.g., presence. ## {% linkable_title Configuration %} To enable the Bayesian sensor, add the following lines to your `configuration.yaml`: ```yaml # Example configuration.yaml entry binary_sensor: - platform: bayesian prior: 0.1 observations: - entity_id: 'switch.kitchen_lights' prob_given_true: 0.6 prob_given_false: 0.2 platform: 'state' to_state: 'on' ``` {% configuration %} prior: description: > The prior probability of the event. At any point in time (ignoring all external influences) how likely is this event to occur? required: true type: float probability_threshold: description: The probability at which the sensor should trigger to `on`. required: false type: float default: 0.5 name: description: Name of the sensor to use in the frontend. required: false type: string default: Bayesian Binary Sensor observations: description: The observations which should influence the likelihood that the given event has occurred. required: true type: list keys: entity_id: description: Name of the entity to monitor. required: true type: string prob_given_true: description: The probability of the observation occurring, given the event is `true`. required: true type: float prob_given_false: description: The probability of the observation occurring, given the event is `false` can be set as well. required: false type: float default: "`1 - prob_given_true` if `prob_given_false` is not set" platform: description: > The only supported observation platforms are `state` and `numeric_state`, which are modeled after their corresponding triggers for automations, requiring `below` and/or `above` instead of `to_state`. required: true type: string to_state: description: The target state. required: true type: string {% endconfiguration %} ## {% linkable_title Full examples %} The following is an example for the `state` observation platform. ```yaml # Example configuration.yaml entry binary_sensor: name: 'in_bed' platform: 'bayesian' prior: 0.25 probability_threshold: 0.95 observations: - entity_id: 'sensor.living_room_motion' prob_given_true: 0.4 prob_given_false: 0.2 platform: 'state' to_state: 'off' - entity_id: 'sensor.basement_motion' prob_given_true: 0.5 prob_given_false: 0.4 platform: 'state' to_state: 'off' - entity_id: 'sensor.bedroom_motion' prob_given_true: 0.5 platform: 'state' to_state: 'on' - entity_id: 'sun.sun' prob_given_true: 0.7 platform: 'state' to_state: 'below_horizon' ``` Next up an example which targets the `numeric_state` observation platform, as seen in the configuration it requires `below` and/or `above` instead of `to_state`. ```yaml # Example configuration.yaml entry binary_sensor: name: 'Heat On' platform: 'bayesian' prior: 0.2 probability_threshold: 0.9 observations: - entity_id: 'sensor.outside_air_temperature_fahrenheit' prob_given_true: 0.95 platform: 'numeric_state' below: 50 ```