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Lecture notes from university.
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introduction-basics-of-sensory-data.md (1397B)


      1 +++
      2 title = 'Introduction & Basics of Sensory Data'
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      4 # Introduction & Basics of Sensory Data
      5 In this course, use machine learning with self/sensory data.
      6 
      7 "Quantified self": self-tracking of biological, physical, behavioral, environmental info. Driven by a goal of individual, they want to do something with the collected info.
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      9 Why? Health, better work performance...self-healing, self-discipline, self-design, self-association, self-entertainment.
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     11 Quantified self is different because sensory noise, missing measurements. It's temporal data and there's interaction with user. Use multiple datasets to learn.
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     13 Terminology:
     14 - measurement: one value for one attribute at one time point
     15 - time series: measurements in temporal order
     16 - supervised learning: inferring function from set of labelled training data
     17 - unsupervised learning: no target label, goal is to describe associations and patterns among attribute
     18 - reinforcement learning: find optimal actions in given situation to maximize numerical reward later in time
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     20 ## Sensory data
     21 Transforming raw data: combine tables by selecting step size Δt considered in data, start at earliest time point. Combine values of measurements within each interval [t, t+Δt)
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     23 Machine learning tasks:
     24 - classification: predicting label (e.g. activity) based on sensors
     25 - regression: predicting e.g. heart rate based on other sensory values and activity