itable for the hotel. However, contract managers usu-
ally lack detailed knowledge about the particular ho-
tel and rely more on the local market understanding
and their communication skills. One of the questions
that travel wholesalers ask is whether there is a pos-
sibility to determine the objective market price of a
hotel before the negotiation is started such that this
knowledge can be used by contractors in leveraging
the deal. And if such a possibility exists, then what
is the solution. A naive solution would be to use
the openness and power of the Internet to check for
the prices of the same hotel at competitors’ websites.
However, this apparently simple approach is deemed
impractical since hotels require their dealers to adver-
tise the same price as it is shown on the hotel’s web
page . A practical solution is to use hedonic pricing
theory (Rosen, 1974) to identify hotels with the same
characteristics. Hedonic pricing theory states that the
price of the product is determined by the individual
characteristics of the product. Therefore, by finding
the hotels with the same characteristics or factors that
affect hotel prices, it will be possible to compare price
rates between similar hotels.
Understanding the factors that affect hotel prices
using the hedonic pricing theory, received much atten-
tion in the research (e.g., Monty and Skidmore 2003;
Thrane 2007; Li et al. 2008; Hung et al. 2010; Chen
and Rothschild 2010; Lee and Jang 2010). The re-
sults show that there is no universal solution to the
factors that affect prices. Moreover, results were af-
fected by many factors such as empirical methods
selected for the analysis, data quality and complete-
ness, and hotel characteristics. The problem of hotel
price estimation using hotel characteristics is an ill-
structured problem since it may have many answers
that depend on the selected parameters. Additionally,
hotel characteristics are of two types: non-spatial, like
room amenities and hotel facilities, and spatial, like
proximity to waterfront or to a business center. It is
easier to answer the question about non-spatial char-
acteristics like Is there a hairdryer in the room then
answering the question How many points of interest
are around the hotel since around is not precisely de-
fined in terms of distance. Therefore, a completely
automated solution process as was demonstrated by
Li et al. (2008) is not feasible in this case since the
guidance of the expert is paramount in the case of
ill-structured problems. Clearly, there is a need for
an interactive decision-support system (DSS) (Shim
et al., 2002; Arnott and Pervan, 2005; Karacapilidis,
2006) that would help the analyst in testing different
hypotheses regarding price factors on selected hotels.
In this system, the analyst can select the region of
investigation by fetching all the necessary data from
his/her corporate database. It should allow him/her to
add additional data that he/she thinks is important in
the analysis. Such data, for example, could be points
of interest around hotels, transportation points, histor-
ical places or information about the proximity of a ho-
tel to waterfront, etc. The analyst can build different
models and apply different algorithms using this sys-
tem and the system should help the analyst in the final
decision about the desirability of a hotel and its objec-
tive price. As was mentioned above, the hotel charac-
teristics and model components have spatial charac-
teristics (hotel location, location of points of interest,
etc.). In previous research it was shown (Crossland
et al., 1995) that addition of Geographic Informa-
tion Systems (GIS) technology to a business decision-
making environment improves the performance of the
decision-maker. Therefore, we argue that the hotel
price management system should at least provide sup-
port to input spatial data, to represent complex spatial
relations, to analyze spatial data, and to output spatial
data in the forms of maps, as discussed in Densham
(1991).
The travel intermediates that are interested in the
development of the outlined hotel price management
decision support system will inevitably face at least
two difficulties. The first difficulty is technical and
relates to high costs pertinent to the development it-
self. Usually, such companies employ a staff of web
programmers that develop web infrastructure of their
corporate website and they do not have spare re-
sources for developing complex analytical GIS-based
systems. One of our goals is to show that by using
the right free and open source tools, it is possible to
save development time by extending existing appli-
cations concentrating on the development of compo-
nents related to the price estimation problem only. We
achieve this by extending Java OpenStreetMap Edi-
tor
1
, a cross-platform editor of OpenStreetMap (Hak-
lay and Weber, 2008) data with a GIS-based interface,
using R Project
2
, a suit for statistical computing and
Weka (Hall et al., 2009), data mining and machine
learning software. The second difficulty is how to ob-
tain the external data that is essential for price esti-
mations, such as points of interest, transportation lo-
cations (buses, trains). These data is originally out
of the scope of wholesalers who generally have only
data about hotel amenities and facilities, and room
prices. There are different free services available
(e.g., GeoNames
3
) to collect the data but these ap-
proaches work best only for some small predefined
areas and require manual preprocessing. In case of
1
http://josm.openstreetmap.de/
2
http://www.r-project.org/
3
http://www.geonames.org/
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