Analyzing Sensor-Based Individual and Population Behavior Patterns via Inverse Reinforcement Learning
Abstract
:1. Introduction
1.1. Background
1.2. Related Work
2. Materials and Methods
2.1. Inverse Reinforcement Learning
2.1.1. Markov Decision Process
2.1.2. Reinforcement Learning
2.1.3. RRE-IRL
2.2. CASAS Smart Home
2.3. Modeling the Smart Home
2.3.1. Floorplan Quantization
2.3.2. Feature Extraction
2.4. Relative Entropy IRL
Algorithm 1: Resident Relative Entropy IRL | |
input: | set of trajectories T |
set of sample trajectories TN(TN⊂T) | |
policy π approximated by TN | |
threshold vector ε | |
learning rate vector α | |
N×k feature matrix Ф # N=number of trajectories, k=number of features | |
output: | preference/weight vector θ |
initialize: | weight vector θ with random numbers and feature expectation μ |
while | () do |
calculate using Equation (9) | |
update | |
end | |
return | θ |
3. Results
- Experiment 1: Analyze and compare smart home behavior patterns for a single resident at two points in time. Determining whether the learned preference/weight vectors are significantly different gives us an indication of whether a person’s behavior is changing over time due to influences such as seasonal changes, changes in the environment, or changes in health;
- Experiment 2: Quantify change in smart home behavior patterns for multiple smart home residents within the same diagnosis group. We hypothesized that the amount of change we would observe in the behavior patterns, as defined by the learned preference/weight vectors, would be greater between different individuals than for one individual at different time points. We hypothesized that this would be particularly true when multiple individuals were drawn from the same health diagnosis sub-population;
- Experiment 3: Quantify change in smart home behavior patterns for multiple smart home residents from different diagnosis groups. We hypothesized that the amount of change we would observe in behavior patterns would be greater between individuals from different diagnosis groups than for either Experiment 1 or Experiment (2);
- Experiment 4: Characterize the nature of behavioral change that is observed between smart home residents from different diagnosis groups. We analyzed the preference/weight vectors that were learned for different smart home residents to determine the nature of the change that was observed between individuals who were healthy and those who were experiencing cognitive decline. We also used the preference vectors to predict the diagnosis group for an individual smart home resident.
3.1. Experimental Conditions
3.2. Within-Home Analysis
3.3. Between-Person Analysis Within the Same Diagnosis Group
3.4. Between-Group Analysis
3.5. Characterizing Behavioral Change for Automated Health Assessment
3.6. Determining Behavior Indicators that Distinguish Population Subgroups
4. Discussion and Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Timestamp | Sensor ID | Message |
---|---|---|
02/06/2009 17:52:28 | M025 | ON |
02/06/2009 17:52:32 | M025 | OFF |
02/06/2009 17:52:35 | M025 | ON |
02/06/2009 17:52:36 | M025 | OFF |
02/06/2009 17:52:37 | M045 | ON |
02/06/2009 17:52:38 | M025 | ON |
02/06/2009 17:52:44 | M045 | OFF |
02/06/2009 17:53:31 | M024 | ON |
02/06/2009 17:53:32 | M019 | ON |
02/06/2009 17:53:33 | M021 | ON |
02/06/2009 17:53:33 | M025 | OFF |
02/06/2009 17:53:34 | M021 | OFF |
02/06/2009 17:53:34 | M018 | ON |
02/06/2009 17:53:36 | M051 | ON |
02/06/2009 17:53:36 | M024 | OFF |
d_Toilet | d_Bathroom_Sink | d_Livingroom_Chair | d_Kitchen_Sink |
---|---|---|---|
d_bedroom | d_kitchen | d_livingroom | d_hallway |
d_stove | d_office_chair | o_toilet | o_livingroom_chair |
o_kitchen_sink | o_office_chair |
Group | ID | Health Diagnosis | #Sensors | Duration of Data Collection | Number of Month-Long Samples | Total Number of Sensor Events |
---|---|---|---|---|---|---|
Cognitive decline | Home 1 | Mild Cognitive Impairment (MCI) | 21 downward-facing motion (motion); 2 motion area (ma) | 843 days | 26 | 4,785,969 |
Home 2 | MCI | 19 motion; 2 ma | 223 days | 7 | 876,303 | |
Home 3 | MCI | 26 motion; 0 ma | 682 days | 22 | 5,167,574 | |
Home 4 | MCI, early dementia | 11 motion; 2 ma | 149 days | 5 | 24,948 | |
Cognitively healthy | Home 5 | Healthy | 13 motion; 1 temperature | 1788 days | 56 | 5,761,601 |
Home 6 | Healthy | 13 motion | 1591 days | 49 | 4,850,970 | |
Home 7 | Healthy | 18 motion; 2 ma | 379 days | 12 | 2,292,312 | |
Home 8 | Healthy | 10 motion; 1 ma | 969 days | 31 | 1,853,637 |
Home ID | d_Toilet | d_Bath-Room Sink | d_Livingroom Chair | d_Kitchen Sink | d_Bedroom | d_Kitchen | d_Living-Room |
---|---|---|---|---|---|---|---|
1 | 0.631 | 0.631 | 0.224 | 0.000 | 1.000 | 0.073 | 0.096 |
2 | 0.059 | 0.061 | 0.057 | 0.000 | 0.847 | 0.445 | 0.047 |
3 | 0.377 | 0.379 | 1.000 | 0.000 | 0.319 | 0.133 | 0.892 |
4 | 0.824 | 0.777 | 0.836 | 0.836 | 1.000 | 0.340 | 0.329 |
5 | 0.382 | 0.405 | 0.435 | 0.407 | 0.615 | 0.603 | 0.429 |
6 | 0.988 | 0.988 | 0.998 | 1.000 | 0.292 | 0.995 | 0.999 |
7 | 0.308 | 0.308 | 0.745 | 0.318 | 0.000 | 0.379 | 0.745 |
8 | 0.246 | 0.246 | 0.770 | 0.000 | 0.743 | 0.545 | 0.770 |
Home ID | d_Hallway | d_Stove | d_Office Chair | o_Toilet | o_Living-Room Chair | o_Kitchen Sink | o_Office Chair |
1 | 0.302 | 0.326 | 0.401 | 0.666 | 0.262 | 0.292 | 0.281 |
2 | 1.000 | 0.049 | 0.048 | 0.060 | 0.047 | 0.000 | 0.046 |
3 | 0.467 | 0.001 | 0.123 | 0.524 | 0.711 | 0.486 | 0.313 |
4 | 0.871 | 0.855 | 0.000 | 0.725 | 0.797 | 0.719 | 0.689 |
5 | 0.917 | 0.661 | 0.000 | 0.381 | 0.539 | 1.000 | 0.854 |
6 | 0.993 | 0.992 | 0.000 | 0.996 | 0.990 | 0.993 | 0.767 |
7 | 0.068 | 0.318 | 0.252 | 1.000 | 0.594 | 0.652 | 0.893 |
8 | 0.464 | 0.578 | 0.580 | 0.246 | 0.413 | 0.538 | 1.000 |
ID | d_Toilet | d_Bath-Room Sink | d_Living-Room Chair | d_Kit-Chen Sink | d_Bed-Room | d_Kit-Chen | d_Living-Room | d_Hall-way | d_Stove | d_Office-Chair | Dura-tion Mean | Overall Mean |
---|---|---|---|---|---|---|---|---|---|---|---|---|
1 | 0.39 | 0.39 | 0.10 | 0.35 | 0.07 | 0.30 | 0.35 | 0.40 | 0.25 | 0.96 | 0.36 | 0.40 |
2 | 0.45 | 0.38 | 0.33 | 0.27 | 0.04 * | 0.02 * | 0.03 * | 0.02 * | 0.29 | 0.07 | 0.19 | 0.29 |
3 | 0.74 | 0.74 | 0.37 | 0.55 | 0.46 | 0.47 | 0.54 | 0.47 | 0.55 | 0.48 | 0.54 | 0.54 |
4 | 0.46 | 0.40 | 0.32 | 0.28 | 0.35 | 0.09 | 0.84 | 0.12 | 0.30 | 0.09 | 0.33 | 0.39 |
5 | 0.42 | 0.87 | 0.28 | 0.56 | 0.54 | 0.65 | 0.28 | 0.81 | 0.73 | 0.37 | 0.55 | 0.51 |
6 | 0.56 | 0.03 * | 0.08 | 0.58 | 0.92 | 0.16 | 0.83 | 0.09 | 0.55 | 0.29 | 0.41 | 0.46 |
7 | 0.14 | 0.14 | 0.31 | 0.49 | 0.17 | 0.55 | 0.31 | 0.15 | 0.49 | 0.76 | 0.35 | 0.33 |
8 | 0.91 | 0.22 | 0.06 | 0.78 | 0.57 | 0.61 | 0.06 | 0.66 | 0.66 | 0.49 | 0.50 | 0.44 |
Cognitive Decline | d_Toilet | d_Bath-Room Sink | d_Living-Room Chair | d_Kitchen Sink | d_Bed-Room | d_Kitchen | d_Living-Room | d_Hall-way |
0.29 | 0.29 | 0.29 | 0.24 | 0.67 | 0.56 | 0.79 | 0.62 | |
d_Stove | d_Office Chair | o_Toilet | o_Living-Room Chair | o_Kitchen Sink | o_Office Chair | Overall Mean | ||
0.85 | 0.78 | 0.00 * | 0.12 | 0.10 | 0.35 | 0.42 | ||
Cognitively Healthy | d_Toilet | d_Bath-Room Sink | d_Living-Room Chair | d_Kitchen Sink | d_Bed-Room | d_Kitchen | d_Living-Room | d_Hall-way |
0.10 | 0.10 | 0.02 * | 0.62 | 0.99 | 0.62 | 0.02 * | 0.58 | |
d_Stove | d_Office Chair | o_Toilet | o_Living-Room Chair | o_Kitchen Sink | o_Office Chair | Overall Mean | ||
0.58 | 0.95 | 0.17 | 0.26 | 0.00 * | 0.00 * | 0.32 |
d_Toilet | d_Bathroom Sink | d_Livingroom Chair | d_Kitchen Sink | d_Bedroom | d_Kitchen | d_Living-Room | d_Hallway |
0.10 | 0.10 | 0.02 * | 0.62 | 0.99 | 0.62 | 0.02 * | 0.58 |
d_Stove | d_Office Chair | o_Toilet | o_Livingroom Chair | o_Kitchen Sink | o_Office Chair | Overall Mean | |
0.95 | 0.17 | 0.26 | 0.00 * | 0.00 * | 0.01 * | 0.32 |
Accuracy | Precision | Recall | F1 Score |
---|---|---|---|
0.84 | 0.88 | 0.90 | 0.89 |
o_Toilet | d_Toilet | d_Hallway | d_Livingroom | o_Office Chair | d_Bathroom Sink | o_Living-Room Chair |
---|---|---|---|---|---|---|
0.33 | 0.22 | 0.10 | 0.06 | 0.06 | 0.04 | 0.04 |
d_Living-Room Chair | d_Bedroom | d_Kitchen | d_Stove | d_Office Chair | o_Kitchen Sink | d_Kitchen Sink |
0.03 | 0.02 | 0.02 | 0.02 | 0.02 | 0.02 | 0.01 |
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Lin, B.; Cook, D.J. Analyzing Sensor-Based Individual and Population Behavior Patterns via Inverse Reinforcement Learning. Sensors 2020, 20, 5207. https://doi.org/10.3390/s20185207
Lin B, Cook DJ. Analyzing Sensor-Based Individual and Population Behavior Patterns via Inverse Reinforcement Learning. Sensors. 2020; 20(18):5207. https://doi.org/10.3390/s20185207
Chicago/Turabian StyleLin, Beiyu, and Diane J. Cook. 2020. "Analyzing Sensor-Based Individual and Population Behavior Patterns via Inverse Reinforcement Learning" Sensors 20, no. 18: 5207. https://doi.org/10.3390/s20185207
APA StyleLin, B., & Cook, D. J. (2020). Analyzing Sensor-Based Individual and Population Behavior Patterns via Inverse Reinforcement Learning. Sensors, 20(18), 5207. https://doi.org/10.3390/s20185207