Modeling Temporal Variation in Physical Activity Using Functional Principal Components Analysis
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Jacqueline Kerr | Loki Natarajan | Suneeta Godbole | Ian Abramson | Eileen Johnson | Selene Yue Xu | Sandahl H. Nelson | Ruth E. Patterson | Cheryl L. Rock | Dorothy D. Sears | C. Rock | Ian Abramson | L. Natarajan | R. Patterson | S. Godbole | J. Kerr | D. Sears | Eileen Johnson | S. Nelson | S. Xu
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