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Mode choice analysis is the third step in the conventional four-step transportation forecasting model of
transportation planning Transportation planning is the process of defining future policies, goals, investments, and spatial planning designs to prepare for future needs to move people and goods to destinations. As practiced today, it is a collaborative process that ...
, following
trip distribution Trip distribution (or destination choice or zonal interchange analysis) is the second component (after trip generation, but before mode choice and route assignment) in the traditional four-step transportation forecasting model. This step matches ...
and preceding
route assignment Route assignment, route choice, or traffic assignment concerns the selection of routes (alternative called paths) between origins and destinations in transportation networks. It is the fourth step in the conventional transportation forecasting ...
. From origin-destination table inputs provided by trip distribution, mode choice analysis allows the modeler to determine probabilities that travelers will use a certain
mode of transport Mode of transport is a term used to distinguish between different ways of transportation or transporting people or goods. The different modes of transport are air, water, and land transport, which includes rails or railways, road and off-road ...
. These probabilities are called the
modal share A modal share (also called mode split, mode-share, or modal split) is the percentage of travelers using a particular type of transportation or number of trips using said type. In freight transportation, this may be measured in mass. Modal share i ...
, and can be used to produce an estimate of the amount of trips taken using each feasible mode.


History

The early
transportation Transport (in British English), or transportation (in American English), is the intentional movement of humans, animals, and goods from one location to another. Modes of transport include air, land ( rail and road), water, cable, pipelin ...
planning model developed by the
Chicago Area Transportation Study (''City in a Garden''); I Will , image_map = , map_caption = Interactive Map of Chicago , coordinates = , coordinates_footnotes = , subdivision_type = Country , subdivision_name ...
(CATS) focused on
transit Transit may refer to: Arts and entertainment Film * ''Transit'' (1979 film), a 1979 Israeli film * ''Transit'' (2005 film), a film produced by MTV and Staying-Alive about four people in countries in the world * ''Transit'' (2006 film), a 2006 ...
. It wanted to know how much travel would continue by transit. The CATS divided transit trips into two classes: trips to the
Central Business District A central business district (CBD) is the commercial and business centre of a city. It contains commercial space and offices, and in larger cities will often be described as a financial district. Geographically, it often coincides with the "city ...
, or CBD (mainly by subway/elevated transit, express buses, and commuter trains) and other (mainly on the local bus system). For the latter, increases in auto ownership and use were a trade-off against bus use; trend data were used. CBD travel was analyzed using historic mode choice data together with projections of CBD land uses. Somewhat similar techniques were used in many studies. Two decades after CATS, for example, the London study followed essentially the same procedure, but in this case, researchers first divided trips into those made in the inner part of the city and those in the outer part. This procedure was followed because it was thought that income (resulting in the purchase and use of automobiles) drove mode choice.


Diversion curve techniques

The CATS had diversion curve techniques available and used them for some tasks. At first, the CATS studied the diversion of auto traffic from streets and arterial roads to proposed expressways. Diversion curves were also used for bypasses built around cities to find out what percent of traffic would use the bypass. The mode choice version of diversion curve analysis proceeds this way: one forms a ratio, say: : \frac = R where: :''cm'' = travel time by mode ''m'' and :''R'' is empirical data in the form: Given the ''R'' that we have calculated, the graph tells us the percent of users in the market that will choose transit. A variation on the technique is to use costs rather than time in the diversion ratio. The decision to use a time or cost ratio turns on the problem at hand. Transit agencies developed diversion curves for different kinds of situations, so variables like income and population density entered implicitly. Diversion curves are based on empirical observations, and their improvement has resulted from better (more and more pointed) data. Curves are available for many markets. It is not difficult to obtain data and array results. Expansion of transit has motivated data development by operators and planners. Yacov Zahavi’s UMOT studies, discussed earlier, contain many examples of diversion curves. In a sense, diversion curve analysis is
expert system In artificial intelligence, an expert system is a computer system emulating the decision-making ability of a human expert. Expert systems are designed to solve complex problems by reasoning through bodies of knowledge, represented mainly as if� ...
analysis. Planners could "eyeball" neighborhoods and estimate transit ridership by routes and time of day. Instead, diversion is observed empirically and charts drawn.


Disaggregate travel demand models

Travel demand theory was introduced in the appendix on traffic generation. The core of the field is the set of models developed following work by Stan Warner in 1962 (Strategic Choice of Mode in Urban Travel: A Study of Binary Choice). Using data from the CATS, Warner investigated classification techniques using models from biology and psychology. Building from Warner and other early investigators, disaggregate demand models emerged. Analysis is disaggregate in that individuals are the basic units of observation, yet aggregate because models yield a single set of parameters describing the choice behavior of the population. Behavior enters because the theory made use of consumer behavior concepts from economics and parts of choice behavior concepts from psychology. Researchers at the
University of California, Berkeley The University of California, Berkeley (UC Berkeley, Berkeley, Cal, or California) is a public land-grant research university in Berkeley, California. Established in 1868 as the University of California, it is the state's first land-grant un ...
(especially
Daniel McFadden Daniel Little McFadden (born July 29, 1937) is an American econometrician who shared the 2000 Nobel Memorial Prize in Economic Sciences with James Heckman. McFadden's share of the prize was "for his development of theory and methods for analyzi ...
, who won a
Nobel Prize in Economics The Nobel Memorial Prize in Economic Sciences, officially the Sveriges Riksbank Prize in Economic Sciences in Memory of Alfred Nobel ( sv, Sveriges riksbanks pris i ekonomisk vetenskap till Alfred Nobels minne), is an economics award administered ...
for his efforts) and the
Massachusetts Institute of Technology The Massachusetts Institute of Technology (MIT) is a private land-grant research university in Cambridge, Massachusetts. Established in 1861, MIT has played a key role in the development of modern technology and science, and is one of th ...
(
Moshe Ben-Akiva Moshe E. Ben-Akiva (born 1944) is an Israeli-American engineer currently the Edmund K. Turner Professor of Civil and Environmental Engineering at Massachusetts Institute of Technology and has been awarded honorary degrees by University of the A ...
) (and in MIT associated consulting firms, especially
Cambridge Systematics Cambridge Systematics, Inc. is an independent, employee-owned transportation consultancy firm with corporate headquarters located in Medford, Massachusetts. Cambridge Systematics provides strategic planning and management services, objective analy ...
) developed what has become known as choice models, direct demand models (DDM), Random Utility Models (RUM) or, in its most used form, the multinomial logit model (MNL). Choice models have attracted a lot of attention and work; the Proceedings of the
International Association for Travel Behavior Research International is an adjective (also used as a noun) meaning "between nations". International may also refer to: Music Albums * ''International'' (Kevin Michael album), 2011 * ''International'' (New Order album), 2002 * ''International'' (The T ...
chronicles the evolution of the models. The models are treated in modern transportation planning and transportation engineering textbooks. One reason for rapid model development was a felt need. Systems were being proposed (especially transit systems) where no empirical experience of the type used in diversion curves was available. Choice models permit comparison of more than two alternatives and the importance of attributes of alternatives. There was the general desire for an analysis technique that depended less on aggregate analysis and with a greater behavioral content. And there was attraction, too, because choice models have logical and behavioral roots extended back to the 1920s as well as roots in
Kelvin Lancaster Kelvin John Lancaster (10 December 1924 – 23 July 1999) was an Australian mathematical economist and John Bates Clark professor of economics at Columbia University. He is best known for the development of the Theory of the Second Best with ...
’s
consumer behavior theory A consumer is a person or a group who intends to order, or uses purchased goods, products, or services primarily for personal, social, family, household and similar needs, who is not directly related to entrepreneurial or business activities. T ...
, in
utility theory As a topic of economics, utility is used to model worth or value. Its usage has evolved significantly over time. The term was introduced initially as a measure of pleasure or happiness as part of the theory of utilitarianism by moral philosopher ...
, and in modern
statistical Statistics (from German: '' Statistik'', "description of a state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a scientific, industr ...
methods.


Psychological roots

Early psychology work involved the typical experiment: Here are two objects with weights, ''w1'' and ''w2'', which is heavier? The finding from such an experiment would be that the greater the difference in weight, the greater the probability of choosing correctly. Graphs similar to the one on the right result.
Louis Leon Thurstone Louis Leon Thurstone (29 May 1887 – 29 September 1955) was an American pioneer in the fields of psychometrics and psychophysics. He conceived the approach to measurement known as the law of comparative judgment, and is well known for his cont ...
proposed (in the 1920s) that perceived weight, :''w'' = ''v'' + ''e'', where ''v'' is the true weight and ''e'' is random with :''E''(''e'') = 0. The assumption that ''e'' is normally and identically distributed (NID) yields the binary probit model.


Econometric formulation

Economists deal with utility rather than physical weights, and say that :observed utility = mean utility + random term. The characteristics of the object, x, must be considered, so we have :''u''(''x'') = ''v''(''x'') + ''e''(''x''). If we follow Thurston's assumption, we again have a
probit In probability theory and statistics, the probit function is the quantile function associated with the standard normal distribution. It has applications in data analysis and machine learning, in particular exploratory statistical graphics and s ...
model. An alternative is to assume that the
error term In mathematics and statistics, an error term is an additive type of error An error (from the Latin ''error'', meaning "wandering") is an action which is inaccurate or incorrect. In some usages, an error is synonymous with a mistake. The etymol ...
s are
independently and identically distributed In probability theory and statistics, a collection of random variables is independent and identically distributed if each random variable has the same probability distribution as the others and all are mutually independent. This property is usual ...
with a
Weibull Weibull is a Swedish locational surname. The Weibull family share the same roots as the Danish / Norwegian noble family of Falsenbr>They originated from and were named after the village of Weiböl in Widstedts parish, Jutland, but settled in Sk� ...
, Gumbel Type I, or double exponential distribution. (They are much the same, and differ slightly in their tails (thicker) from the
normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu ...
). This yields the multinomial logit model (MNL). Daniel McFadden argued that the Weibull had desirable properties compared to other distributions that might be used. Among other things, the error terms are normally and identically distributed. The logit model is simply a log ratio of the probability of choosing a mode to the probability of not choosing a mode. : \log \left( \frac \right) = v(x_i ) Observe the mathematical similarity between the logit model and the S-curves we estimated earlier, although here share increases with utility rather than time. With a choice model we are explaining the share of travelers using a mode (or the probability that an individual traveler uses a mode multiplied by the number of travelers). The comparison with S-curves is suggestive that modes (or technologies) get adopted as their utility increases, which happens over time for several reasons. First, because the utility itself is a function of
network effect In economics, a network effect (also called network externality or demand-side economies of scale) is the phenomenon by which the value or utility a user derives from a good or service depends on the number of users of compatible products. Net ...
s, the more users, the more valuable the service, higher the utility associated with joining the network. Second because utility increases as user costs drop, which happens when fixed costs can be spread over more users (another network effect). Third technological advances, which occur over time and as the number of users increases, drive down relative cost. An illustration of a utility expression is given: : \log \left( \frac \right) = \beta _0 + \beta _1 \left( c_A - c_T \right) + \beta _2 \left( t_A - t_T \right) + \beta _3 I + \beta _4 N = v_A where :''Pi'' = Probability of choosing mode i. :''PA'' = Probability of taking auto :''cA,cT'' = cost of auto, transit :''tA,tT'' = travel time of auto, transit :''I'' = income :''N'' = Number of travelers With algebra, the model can be translated to its most widely used form: : \frac = e^ : P_A = e^ - P_A e^ : P_A \left( 1 + e^ \right) = e^ : P_A = \frac It is fair to make two conflicting statements about the estimation and use of this model: #it's a "house of cards", and #used by a technically competent and thoughtful analyst, it's useful. The "house of cards" problem largely arises from the utility theory basis of the model specification. Broadly, utility theory assumes that (1) users and suppliers have perfect information about the market; (2) they have deterministic functions (faced with the same options, they will always make the same choices); and (3) switching between alternatives is costless. These assumptions don’t fit very well with what is known about behavior. Furthermore, the aggregation of utility across the population is impossible since there is no universal utility scale. Suppose an option has a net utility ''ujk'' (option ''k'', person ''j''). We can imagine that having a systematic part ''vjk'' that is a function of the characteristics of an object and person ''j'', plus a random part ''ejk'', which represents tastes, observational errors and a bunch of other things (it gets murky here). (An object such as a vehicle does not have utility, it is characteristics of a vehicle that have utility.) The introduction of ''e'' lets us do some aggregation. As noted above, we think of observable utility as being a function: : v_A = \beta _0 + \beta _1 \left( c_A - c_T \right) + \beta _2 \left( t_A - t_T \right) + \beta _3 I + \beta _4 N where each variable represents a characteristic of the auto trip. The value ''β0'' is termed an alternative specific constant. Most modelers say it represents characteristics left out of the equation (e.g., the political correctness of a mode, if I take transit I feel morally righteous, so ''β''0 may be negative for the automobile), but it includes whatever is needed to make error terms NID.


Econometric estimation

Turning now to some technical matters, how do we estimate ''v(x)''? Utility (''v(x)'') isn’t observable. All we can observe are choices (say, measured as 0 or 1), and we want to talk about probabilities of choices that range from 0 to 1. (If we do a regression on 0s and 1s we might measure for ''j'' a probability of 1.4 or −0.2 of taking an auto.) Further, the distribution of the error terms wouldn’t have appropriate statistical characteristics. The MNL approach is to make a
maximum likelihood In statistics, maximum likelihood estimation (MLE) is a method of estimating the parameters of an assumed probability distribution, given some observed data. This is achieved by maximizing a likelihood function so that, under the assumed stat ...
estimate of this functional form. The likelihood function is: : L^* = \prod_^N we solve for the estimated parameters : \hat \theta \, that max ''L''*. This happens when: : \frac = 0 The log-likelihood is easier to work with, as the products turn to sums: : \ln L^* = \sum_^N \ln f\left( y_n \left, x_n ,\theta \right. \right) Consider an example adopted from John Bitzan’s Transportation Economics Notes. Let ''X'' be a binary variable that is equal to 1 with probability ''γ'', and equal to 0 with probability (1 − ''gamma''). Then f(0) = (1 − ''γ'') and f(1) = ''γ''. Suppose that we have 5 observations of ''X'', giving the sample . To find the maximum likelihood estimator of ''γ'' examine various values of ''γ'', and for these values determine the probability of drawing the sample If ''γ'' takes the value 0, the probability of drawing our sample is 0. If ''γ'' is 0.1, then the probability of getting our sample is: f(1,1,1,0,1) = f(1)f(1)f(1)f(0)f(1) = 0.1×0.1×0.1×0.9×0.1 = 0.00009 We can compute the probability of obtaining our sample over a range of ''γ'' – this is our likelihood function. The likelihood function for n independent observations in a logit model is : L^* = \prod_^N \left( 1 - P_i \right)^ where: ''Yi'' = 1 or 0 (choosing e.g. auto or not-auto) and Pi = the probability of observing ''Y''''i'' = 1 The log likelihood is thus: : \ell = \ln L^* = \sum_^n \left Y_i \ln P_i + \left( 1 - Y_i \right)\ln \left( 1 - P_i \right) \right In the binomial (two alternative) logit model, : P_\text = \frac , so : \ell = \ln L^* = \sum_^n \left Y_i v(x_\text ) - \ln \left( 1 + e^ \right) \right The log-likelihood function is maximized setting the partial derivatives to zero: : \frac = \sum_^n \left( Y_i - \hat P_i \right) = 0 The above gives the essence of modern MNL choice modeling.


Additional topics

Topics not touched on include the “red bus, blue bus” problem; the use of nested models (e.g., estimate choice between auto and transit, and then estimate choice between rail and bus transit); how consumers’ surplus measurements may be obtained; and model estimation, goodness of fit, etc. For these topics see a textbook such as Ortuzar and Willumsen (2001).


Returning to roots

The discussion above is based on the economist’s utility formulation. At the time MNL modeling was developed there was some attention to psychologist's choice work (e.g., Luce’s choice axioms discussed in his Individual Choice Behavior, 1959). It has an analytic side in computational process modeling. Emphasis is on how people think when they make choices or solve problems (see Newell and Simon 1972). Put another way, in contrast to utility theory, it stresses not the choice but the way the choice was made. It provides a conceptual framework for travel choices and agendas of activities involving considerations of long and short term memory, effectors, and other aspects of thought and decision processes. It takes the form of rules dealing with the way information is searched and acted on. Although there is a lot of attention to behavioral analysis in transportation work, the best of modern psychological ideas are only beginning to enter the field. (e.g. Golledge, Kwan and Garling 1984; Garling, Kwan, and Golledge 1994).


External links


Transportation Systems Analysis Model
– TSAM is a nationwide transportation planning model to forecast intercity travel behavior in the United States.


See also

*
Environmental impact of aviation Like other emissions resulting from fossil fuel combustion, aircraft engines produce gases, noise, and particulates, raising environmental concerns over their global effects and their effects on local air quality. Jet airliners contribute to ...
* Hypermobility (travel) *
Modal share A modal share (also called mode split, mode-share, or modal split) is the percentage of travelers using a particular type of transportation or number of trips using said type. In freight transportation, this may be measured in mass. Modal share i ...
*
Travel behavior Travel behavior is the study of what people do over geography, and how people use transport. Questions studied The questions studied in travel behavior are broad, and are probed through activity and time-use research studies, and surveys of trave ...
*
Willingness to pay In behavioral economics, willingness to pay (WTP) is the maximum price at or below which a consumer will definitely buy one unit of a product.Varian, Hal R. (1992), Microeconomic Analysis, Vol. 3. New York: W.W. Norton. This corresponds to the st ...


References

* Garling, Tommy,
Mei-Po Kwan Mei-Po Kwan (, born 1962) is an American geographer and academic. Her contributions to the field include environmental health, human mobility, transport and health issues in cities, and geographic information science ( GIScience). Career Kwan is ...
, and Reginald G. Golledge. Household Activity Scheduling, Transportation Research, 22B, pp. 333–353. 1994. * Golledge. Reginald G., Mei Po Kwan, and Tommy Garling, “Computational Process Modeling of Household Travel Decisions,” Papers in Regional Science, 73, pp. 99–118. 1984. * Lancaster, K.J., A new approach to consumer theory. Journal of Political Economy, 1966. 74(2): p. 132–157. * Luce, Duncan R. (1959). Individual choice behavior, a theoretical analysis. New York, Wiley. * Newell, A. and Simon, H. A. (1972). Human Problem Solving. Englewood Cliffs, NJ: Prentice Hall. * Ortuzar, Juan de Dios and L. G. Willumsen’s Modelling Transport. 3rd Edition. Wiley and Sons. 2001, * Thurstone, L.L. (1927). A law of comparative judgement. Psychological Review, 34, 278–286. * Warner, Stan 1962 Strategic Choice of Mode in Urban Travel: A Study of Binary Choice {{Transportation-planning Transportation planning