Exploring day-to-day variability in time use for household members

Studies of activity-travel patterns typically use 1-day or pooled samples, and more often than not, are conducted at the individual level. By default, they assume that activity-travel decisions are uniform from 1 day to the next and individuals are independent from one another. Such assumptions do not reflect reality. This research investigates day-to-day variability in activity time-use patterns of household members while incorporating variations in their interactions. Results from a descriptive analysis and a series of daily structural equation models provide evidence of day-to-day variability in activity time-use patterns. Specifically, time-use patterns on weekdays are substantially different from those on weekends. Furthermore, compared to independent activities, there is a higher proportion of intra-personal variability and a lower proportion of inter-personal variability for joint activities. These findings suggest that transportation planners should not combine independent and joint activities as has been the case in the recent past, nor should they use single-day or pooled models when estimating activity time-use patterns.

[1]  S. Fujii,et al.  Analysis of Individuals’ Joint-Activity Engagement Using a Model System of Activity-Travel Behavior and Time Use , 1999 .

[2]  R. Kitamura,et al.  An analysis of time allocation to in-home and out-of-home discretionary activities across working days and non- working days , 1999 .

[3]  Konstadinos G. Goulias,et al.  Exploratory Longitudinal Analysis of Solo and Joint Trip Making Using the Puget Sound Transportation Panel , 1999 .

[4]  M. McNally,et al.  A MODEL OF ACTIVITY PARTICIPATION AND TRAVEL INTERACTIONS BETWEEN HOUSEHOLD HEADS , 1996 .

[5]  E. I. Pas,et al.  Socio-demographics, activity participation and travel behavior , 1999 .

[6]  Matthew J. Roorda,et al.  Exploring spatial variety in patterns of activity-travel behaviour: initial results from the Toronto Travel-Activity Panel Survey (TTAPS) , 2008 .

[7]  Matthew J. Roorda,et al.  Prototype Model of Household Activity-Travel Scheduling , 2003 .

[8]  M. Clarke,et al.  The significance and measurement of variability in travel behaviour , 1988 .

[9]  Carlos F. Daganzo,et al.  TRANSPORTATION AND TRAFFIC THEORY , 1993 .

[10]  Susan Hanson,et al.  Repetition and Variability in Urban Travel , 2010 .

[11]  Frank S. Koppelman,et al.  Modeling household activity–travel interactions as parallel constrained choices , 2005 .

[12]  Frank S. Koppelman,et al.  A model of joint activity participation between household members , 2002 .

[13]  Kay W. Axhausen,et al.  Within-Household Allocation of Travel: Case of Upper Austria , 2001 .

[14]  K. Axhausen,et al.  Structures of Leisure Travel: Temporal and Spatial Variability , 2004 .

[15]  Stefan Schönfelder,et al.  Measuring the size and structure of human activity spaces The longitudinal perspective , 2002 .

[16]  J. O. Huff,et al.  Classification issues in the analysis of complex travel behavior , 1986 .

[17]  E I Pas,et al.  Multiday Samples, Parameter Estimation Precision, and Data Collection Costs for Least Squares Regression Trip-Generation Models , 1986 .

[18]  S. Srinivasan,et al.  An analysis of multiple interepisode durations using a unifying multivariate hazard model , 2005 .

[19]  Thomas F. Golob,et al.  A Simultaneous Model of Household Activity Participation and Trip Chain Generation , 1999 .

[20]  T. Townsend,et al.  THE EFFECTS OF HOUSEHOLD CHARACTERISTICS ON THE MULTI-DAY TIME ALLOCATIONS AND TRAVEL ACTIVITY PATTERNS OF HOUSEHOLDS AND THEIR MEMBERS , 1987 .

[21]  Matthew J. Roorda,et al.  Long- and short-term dynamics in activity scheduling: A structural equations approach , 2008 .

[22]  Moshe Ben-Akiva,et al.  Dynamic Model of Weekly Activity Pattern , 1986, Transp. Sci..

[23]  P. Kanaroglou,et al.  AN ACTIVITY-EPISODE GENERATION MODEL THAT CAPTURES INTERACTIONS BETWEEN HOUSEHOLD HEADS: DEVELOPMENT AND EMPIRICAL ANALYSIS , 2002 .

[24]  Darren M. Scott,et al.  Examining the role of urban form in shaping people's accessibility to opportunities: an exploratory spatial data analysis , 2008 .

[25]  Darren M. Scott,et al.  An integrated spatio-temporal GIS toolkit for exploring intra-household interactions , 2008 .

[26]  Matthew J. Roorda,et al.  Computerized Household Activity-Scheduling Survey for Toronto, Canada, Area: Design and Assessment , 2004 .

[27]  Rex B. Kline,et al.  Principles and Practice of Structural Equation Modeling , 1998 .

[28]  R. Pendyala,et al.  A structural equations analysis of commuters' activity and travel patterns , 2001 .

[29]  P. Nijkamp,et al.  Measuring the unmeasurable , 1985 .

[30]  Peter Vovsha,et al.  Explicit Modeling of Joint Travel by Household Members: Statistical Evidence and Applied Approach , 2003 .

[31]  Khandker Nurul Habib,et al.  Modelling daily activity program generation considering within-day and day-to-day dynamics in activity-travel behaviour , 2008 .

[32]  S. Hanson,et al.  Systematic variability in repetitious travel , 1988 .

[33]  Peter Jones,et al.  Recent advances in travel demand analysis , 1983 .

[34]  Eric I. Pas,et al.  INTRAPERSONAL VARIABILITY AND MODEL GOODNESS-OF-FIT , 1987 .

[35]  B. Tabachnick,et al.  Using Multivariate Statistics , 1983 .

[36]  Eric I. Pas,et al.  Travel-Activity Behavior in Time and Space: Methods for Representation and Analysis , 1985 .

[37]  Jun Ma,et al.  A dynamic analysis of person and household activity and travel patterns using data from the first two waves in the Puget Sound Transportation Panel , 1997 .

[38]  E. I. Pas,et al.  Intrapersonal variability in daily urban travel behavior: Some additional evidence , 1995 .

[39]  Y. Susilo,et al.  Analysis of Day-to-Day Variability in an Individual's Action Space: Exploration of 6-Week Mobidrive Travel Diary Data , 2005 .

[40]  Darren M. Scott,et al.  Investigation of Planning Priority of Joint Activities in Household Activity-Scheduling Process , 2009 .

[41]  Thomas F. Golob,et al.  Structural Equation Modeling of Travel Choice Dynamics , 1988 .

[42]  Frank S. Koppelman,et al.  An examination of the determinants of day-to-day variability in individuals' urban travel behavior , 1986 .

[43]  Peter Jones,et al.  Developments in dynamic and activity-based approaches to travel analysis , 1990 .

[44]  Chandra R. Bhat,et al.  A retrospective and prospective survey of time-use research , 1999 .

[45]  John Scanzoni,et al.  Family Decision-Making: A Developmental Sex Role Model , 1981 .

[46]  Matthew J. Roorda,et al.  Design and Assessment of the Toronto Area Computerized Household Activity Scheduling Survey , 2004 .

[47]  R. Kitamura An evaluation of activity-based travel analysis , 1988 .

[48]  K. Axhausen,et al.  Habitual travel behaviour: Evidence from a six-week travel diary , 2003 .

[49]  Ilan Salomon,et al.  Technological change and social forecasting: the case of telecommuting as a travel substitute , 1998 .

[50]  Chandra R. Bhat,et al.  Discretionary activity time allocation of individuals between in-home and out-of-home and between weekdays and weekends , 1999 .

[51]  Mariette Kraan,et al.  Time to travel? A model for the allocation of time and money. , 1996 .

[52]  H. Kato,et al.  Joint Resource Allocation Model of Household Consisting of a Husband, a Wife and a Child for Non-work Activities: Comparative Analysis of Tokyo and Toyama, Japan , 2006 .

[53]  Stefan Schönfelder,et al.  INTERSHOPPING DURATION: AN ANALYSIS USING MULTIWEEK DATA , 2002 .

[54]  Yusak O. Susilo,et al.  On an analysis of the day-to-day variability in the individual's action space : an exploration of the six-week Mobidrive travel diary data , 2005 .

[55]  S. Fujii,et al.  A DISCRETE-CONTINUOUS ANALYSIS OF TIME ALLOCATION TO TWO TYPES OF DISCRETIONARY ACTIVITIES WHICH ACCOUNTS FOR UNOBSERVED HETEROGENEITY , 1996 .

[56]  E. I. Pas Weekly travel-activity behavior , 1988 .

[57]  Chandra R. Bhat,et al.  An analysis of the social context of children’s weekend discretionary activity participation , 2007 .

[58]  S. Srinivasan,et al.  An exploratory analysis of joint-activity participation characteristics using the American time use survey , 2008 .

[59]  Susan Hanson,et al.  ASSESSING DAY-TO-DAY VARIABILITY IN COMPLEX TRAVEL PATTERNS , 1982 .