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CalIt2大楼中人员流动计数数据集,用于大楼安防

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帕依提提2024-03-04 收录
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Data Set Information: Observations come from 2 data streams (people flow in and out of the building), over 15 weeks, 48 time slices per day (half hour count aggregates). The purpose is to predict the presence of an event such as a conference in the building that is reflected by unusually high people counts for that day/time period. Attribute Information: 1. Flow ID: 7 is out flow, 9 is in flow 2. Date: MM/DD/YY 3. Time: HH:MM:SS 4. Count: Number of counts reported for the previous half hour Rows: Each half hour time slice is represented by 2 rows: one row for the out flow during that time period (ID=7) and one row for the in flow during that time period (ID=9) Attributes in .events file ("ground truth") 1. Date: MM/DD/YY 2. Begin event time: HH:MM:SS (military) 3. End event time: HH:MM:SS (military) 4. Event name (anonymized) Relevant Papers: "Adaptive event detection with time-varying Poisson processes" A. Ihler, J. Hutchins, and P. Smyth Proceedings of the 12th ACM SIGKDD Conference (KDD-06), August 2006. Citation Request: Please refer to the Machine Learning Repository's citation policy Creator and Maintainer: Jon Hutchins UCI johutchi '@' uci.edu
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