The aim of this article is to provide new evidence on the factors affecting wine prices on both methodological and factual grounds. On the methodological ground, this study is the first to apply a general Box–Cox transformation within the context of hedonic models which exploit all the variables (objective and sensorial characteristics, reputation) pointed out by previous literature as relevant in driving market prices. On the factual ground, the article fills the lack of empirical evidence on the issue for Italy, one of the leading wine producers, by using a large data set on two premium quality wines (Barolo and Barbaresco) covering the 1995–1998 vintages. Our results support the evidence obtained using data from other countries, showing that sensorial traits, the reputation of wines and producers, as well as objective variables are all important factors influencing the consumers' willingness to pay. More importantly, by resorting to a nonnested statistical test (Vuong, 1989) we compare two alternative specifications (taste vs. reputation) and find that the reputation model significantly outperforms the taste one, whereby suggesting that a greater amount of information on how the wine price is formed is contained in the reputation specification.
The so-called hedonic price technique relates the price of a differentiated product to its characteristics, whereby allowing an estimate of the consumers' evaluation of the latter. Classic applications of this technique have analysed durable goods, such as cars, computers and houses. However, in the last decade hedonic price analyses have been performed also for some nondurable goods, in particular wine. Whereas wine is a widely differentiated product and therefore a suitable candidate for this sort of empirical studies, it is difficult to identify the proper characteristics which affect prices. The relevant characteristics could relate to tasting properties (the so-called sensorial variables), such as the wine's aroma, body and finish. However, these variables could be hardly recognized by consumers, in particular in advance with respect to purchase (in fact, wine is an experience good). Given the imperfect information setting, other kinds of variables–such as reputation and observable traits appearing on the label–become additional candidates as determinants of wine price.
Not surprisingly, the very few hedonic analyses carried out so far on wine have explained price formation with different sets of variables. Broadly speaking, two different approaches have been followed. The first one (Combris et al., [
The main purpose of this article is to try to fill this gap and compare the relative importance of sensorial characteristics and reputation variables, taking into account the effect of objective traits. To this end, we exploit a unique data set on two Italian premium wines (Barolo and Barbaresco) produced in a very restricted area in the Piedmont region in Northern Italy. Compared with those used by previous literature, our data set enjoys at least two advantages. First, it contains all the variables which might influence wine price. Second, observations are very homogeneous, in terms of both origin and characteristics, whereby allowing us to focus on single producer and single wine reputation instead of collective reputation (i.e. reputation of groups of producers and wines). As a secondary purpose, our analysis intends to provide evidence on the factors driving wine price also for Italy which, in spite of its leading role as a wine producer, has not been so far the object of empirical analyses.
By way of anticipation, our results show that all various kinds of variables, except current quality, play an important role in explaining market prices. More importantly, we find that a hedonic model including objective and reputation variables outperforms, on statistical grounds, a model with objective and sensorial characteristics. In turn, this suggests that a greater amount of information on how the wine price is formed is contained in the reputation specification.
The rest of the article unfolds as follows. The next section motivates this article by reviewing the relevant previous literature on hedonic price in the wine industry. Section III presents the main characteristics of the two wines and describes the data set used. Section IV specifies the empirical strategy whereas Section V presents the ensuing econometric results. Section VI provides some final remarks and a data appendix concludes the article.
Since the seminal contributions by Griliches ([
Not surprisingly, these studies have mostly used data on housing (e.g. Brookshire et al., [
A first approach rests on the argument that wine quality is generally recognized to depend on sensory evaluations. Although tastes are intrinsically subjective, wine experts claim that few codified characteristics univocally determine the quality of the wine and, in turn, its price. These codified characteristics are the so-called sensorial variables such as the wine's aroma, finish or harmony of components. According to this line of reasoning, Combris et al., ([
A second approach emphasizes the importance of the reputation of wines and producers among consumers. Imperfect information could be overcome if producers acquire reputation over time, so that well-established or expected wine quality could be proxied by long-term reputation, which, in turn, would influence market prices. Furthermore, current quality could be proxied by overall sensory quality score measures from widely accessible published wine guides. However, consumers may not possess this information before price is determined and whether this information increases consumers' knowledge of the product is therefore unclear. Following this line of reasoning, Landon and Smith ([
Summing up, the previous literature on hedonic wine prices has alternatively employed, in addition to objective characteristics, sensorial and reputation variables in order to take into account the effects of quality attributes. However, to the best of our knowledge, no study has so far attempted to jointly use both types of factors to assess their relative importance in determining market prices. As a consequence, whether taste or reputation is more relevant in explaining wine price is still unclear. To shed light on the issue, this article exploits a very rich data set embracing information on all kinds of aforementioned variables for two premium Italian wines: Barolo and Barbaresco. The description of the data set is the object of the next section.
The present article exploits a unique data set collecting data on two premium Italian red wines: Barolo and Barbaresco. Although the former is more widely known than the latter, these two wines have several common features whereby justifying the joint analysis put forth in this article. In particular, the Disciplinary Texts of their 'Denominazione d'Origine Controllata e Garantita' (DOCG) label specifies that the basic grape must be the same for both wines (the Nebbiolo variety). Furthermore, both wines come from the same area in the Piedmont region in Northern Italy, the Langhe, which is quite restricted (only 1930 hectares). In turn, the amount produced is very small (about 12 million bottles per year) and the two wines display quite similar sensorial characteristics and vintage quality.[
The production of Barolo and Barbaresco wines is very fragmented, due to the large number of landowners: there are approximately 750 producers of Barolo and 380 producers of Barbaresco. The combined effect of the small overall quantity and the large number of producers results in a very low output per firm: in fact, only 4.15% of Barolo winemakers produce more than 100 000 bottles and this figure reduces to 2% for Barbaresco.
The variables used in this article have been collected by inspecting several published sources and through direct or phone interviews with the wine producers carried out during the July to September 2002 period.[
Table 1. Descriptive statistics of the variables
Variable Mean SD Min Max % = 0 % = 1 % = 2 % = 3 Price 28.92 11.55 11.36 93.00 — — — — Objective characteristics — — — — 65.67 34.33 — — — — — — 28.19 71.81 — — 13.79 0.36 13.0 14.5 — — — — — — — — 17.91 82.09 — — Current quality 89.12 3.97 69 100 — — — — Reputation • Single wine reputation according to Italian guides: — — — — 88.06 11.94 — — — — — — 85.41 14.59 — — — — — — 69.68 30.02 — — • Single producer reputation: 3.18 4.20 0 29 — — — — 33.02 31.61 0 131 — — — — — — 86.57 13.43 — — Sensorial characteristics • Olfactory characteristics: — — — — — 5.47 49.09 45.44 — — — 14.10 85.90 — — — — 22.55 77.45 — • Gustatory characteristics: — — — — — 2.32 37.31 60.36 — — — — — 20.56 79.44 — — — — — — 7.46 40.13 52.40 Other characteristics 15.9 27.8 1 260 — — — — — — — — 53.07 46.93 —
In particular, our starting point in constructing the database has been the analysis of two leading wine guides: Wine Spectator, probably the best known wine guide which has also been used by some previous literature (e.g. Landon and Smith, [
We identified all the Barolo and Barbaresco wines cited in the two guides for the 1995–1997 vintages for Barolo and the 1996–1998 vintages for Barbaresco (i.e. the last three vintages for which information was available in 2002). We kept only those 227 wines for which data were available for at least two of the three years (603 observations, 111 different producers). Henceforth, we will use the term 'bottle' to identify a specific producer-wine-year observation.
From these two guides we retrieved information on several variables of interest. First, Wine Spectator reports an overall judgement of the wine, ranging from a minimum of 50 to a maximum of 100 (variable VSPE). Second, from the AIS guide we derived wines' alcoholic gradation (ALC). Finally, from both guides we derived: (i) data on quantity produced (BOTT); (ii) a specific judgement on six sensorial traits for each wine (INTE, FINE, COMP, HARM, TANI, FINI); (iii) three objective variables, namely vintage (AN97), type, i.e. whether the wine is a Barolo or a Barbaresco (TYPE), and denomination, i.e. whether the label identifies a particular 'cru' (DEN). It is worthwhile to give some details about the three objective traits and their expected impact on wine price. As for vintage, all the four years considered in this article (1995–1998) are good quality vintages. However, 1997 is unanimously considered the best year and therefore is the only vintage we single out through a dummy variable (AN97) in the econometric analysis to check the presence of a positive effect on market price. The variable TYPE is included in the hedonic model to take into account that, in spite of the common high quality standard, Barolo wine is more widely known than Barbaresco and this circumstance could lead to a higher willingness to pay for the former. Finally, the mark on the label of a special denomination ('cru') in addition to DOCG, such as, for instance, the origin from particular vineyards, is likely to represent an important distinction factor for consumers, able to push wine price upward.
The very localized production area allowed us to keep also direct and phone interviews with producers. Through these contacts we recovered information on prices and on whether wine passed an aging period in barrique barrels. In particular, we asked producers to report the retail price at which they would sell the bottles directly to the consumer in their estate wineshop, tax included. Inspection of Table 1, which presents the descriptive statistics for the variables, reveals the very large variability in price, which ranges from 11.5 to 93 euros per bottle. Barrique barrels are smaller and manufactured from higher quality oak than traditional ones, so that they convey a special taste to the wine. Several producers nowadays blend wine aged in these barrels with wine aged in traditional barrels. As this information is not reported in the guides (nor on the label) we asked producers whether their wine contains wine aged in barrique barrels.[
Finally, we relied on wine publications to construct two crucial groups of variables, those linked with the reputation of wines and producers. As for single wine reputation, we used three widely known Italian guides (I vini di Veronelli by Veronelli, Guida dei Vini Italiani by Maroni and Guida ai Vini d'Italia by AA. VV.) to construct three bottle-specific dummy variables (ECVER, ECMAR, ECGAM, respectively) representing single wine reputation among consumers. In fact, these guides select, according to various criteria, 'best' wines, which soon become well known among consumers. Each of our dummies takes a value of 1 (and 0 otherwise) if the bottle has been selected as one of these 'best' wines. We include all the three variables as guides might differ in their judgement, so that the choice of 'best' wines differ from one guide to the other, but all of them represent a noteworthy source of information for consumers. As far as the reputation of producers is concerned, we constructed three producer-specific time-invariant variables. The first one, labelled FIT, represents producers' reputation in Italy: it is the number of excellence ratings given by the Guida ai Vini d'Italia publication over the 1987 to 2002 period to any wine (not only Barolo and Barbaresco) of a single producer.[
Although the hedonic price technique has been widely used in the empirical applications to study the process of price formation in several markets, economic theory provides little guidance about the functional form of the dependence of price on good's attributes. The research strategy followed by the previous literature on the wine industry is characterized by the preliminary choice of the hedonic price model to estimate (i.e. sensorial or reputation), and the subsequent selection of the appropriate functional form (e.g. log-log, log-linear, reciprocal and the like) according to some specification tests (e.g. the Reset test). The present study sharply departs from this strategy, as we neither select ex ante the model type nor its functional form.
More specifically, the research line of this article relies on three steps. We first estimate different Box–Cox transformations (Box and Cox, [
In the first stage, we consider several variants of the Box–Cox transformations. The most general model we estimate is:
(
Graph
where V
(1b)
Graph
J is the set of regressors x
A slightly less general specification than (
(
Graph
where both regressand and at least a set of regressors are transformed through the same Box–Cox parameter (λ). We will refer to model (
Proceeding with further simplifications, we can imagine to transform only (a set of) regressors or the regressand only, leading to the following specifications:
(
Graph
(
Graph
Again, we will refer to model (
Note finally that model (
All eight models [models (
For the sake of parsimony, in the second stage we simplify the two preferred CLV and LS specifications through a stepwise procedure: we gradually delete the least significant variable and stop only when all the estimated coefficients for retained regressors are significant at least at the 5% level.
Finally, we resort to the Vuong ([
All the models above have been estimated by Maximum Likelihood with the Stata software, version 9.2. The results are presented in Tables 2–8.
Table 2. Sensorial (CLV) model estimates for different Box–Cox transformations
Specification Box–Cox parameters Log L θ, λ = 2.28 0.025 θ = −0.52 0.000 −152.96 θ = λ = −0.52 0.000 −153.69 θ = 1, λ = −0.92 0.043 −284.16 θ, θ = −0.52 0.000 −154.57 θ = — — −169.36 θ = — — −288.92 θ = 0, λ = 2.52 0.048 −168.35 θ, θ = −0.50 0.000 −155.25
Estimates of the eight Box–Cox specifications for the CLV-type hedonic equation (or sensorial model) are shown in Table 2. Both parameters of the general model (THETA) have reasonable magnitude and are statistically significant at the 5% level. Proceeding across the possible simplifications, we notice that the estimated parameter θ (i.e. the one transforming the dependent variable p) proves to be quite stable (values ranging from −0.52 and −0.50), whereas the estimates of λ (the parameter transforming the independent variables) show high variability. Comparisons between the THETA model and its various simplifications are presented in Table 3. Not surprisingly, all the specification where the transformation of regressand is restricted to a given value (LIN-RHS, LOG-LOG, LIN-LIN, LOG-RHS) are strongly rejected whereas the chi-squared statistic for the other models is much lower. Notwithstanding, the only specification not rejected at the 10% level is the LAMBDA model.
Table 3. Comparison among sensorial (CLV) specifications by LR test
Model [·] vs. χ2-statistic [ 1.47 0.226 [ 262.4 0.000 [ 3.24 0.072 [ 32.82 0.000 [ 271.93 0.000 [ 30.79 0.000 [ 4.58 0.032
As for the LS-type hedonic equation (or reputation model), estimates of the Box–Cox transformations reported in Table 4 reveal remarkable differences with respect to those of the CLV-type models. In fact, in the THETA specification the transformation of the independent variables (λ) is 0.49 and proves to be statistically significant, whereas the parameter θ is fairly small in value and insignificant. Again, the estimates for parameter θ are quite robust across the different specification and close to zero, while λ shows larger variability (ranging between 0.06 and 1.27). LR tests comparing general and restricted specifications (see Table 5) clearly favour the LOG-RHS model where the value of θ is constrained to be zero.
Table 4. Reputation (LS) model estimates for different Box–Cox transformations
Specification Box–Cox parameters Log L θ, λ = 0.49 0.000 θ = −0.05 0.572 68.88 θ = λ = 0.06 0.453 63.61 θ = 1, λ = 1.27 0.000 −13.95 θ, θ = 0.00 0.994 63.69 θ = — — 63.33 θ = — — −14.30 θ = 0, λ = 0.50 0.000 68.72 θ, θ = −0.06 0.471 63.60
Table 5. Comparison among reputation (LS) specifications by LR test
Model [·] vs. Model [·] χ2-statistic [ 10.53 0.001 [ 165.66 0.000 [ 10.37 0.001 [ 11.09 0.001 [ 166.35 0.000 [ 0.32 0.571 [ 10.56 0.001
We then simplified the two preferred Box–Cox transformations for the CLV (LAMBDA) and LS (LOG-RHS) specifications by applying the stepwise procedure described above. Coefficients estimates for the general and simplified versions of the two models are presented in Table 6. As the values of retained explanatory variables are very similar in both cases, we will comment only upon the results of the restricted versions.
Table 6. Coefficient estimates of the general and restricted CVL and LS preferred models
Variable General CVL [ Restricted CVL [ General LS [ Restricted LS [ 0.104 (0.000) 0.115 (0.000) 0.063 (0.002) 0.073 (0.000) 0.075 (0.010) 0.067 (0.020) 0.068 (0.001) 0.068 (0.001) 0.985 (0.667) — 0.117 (0.312) — 0.286 (0.000) 0.301 (0.000) 0.154 (0.000) 0.166 (0.000) 0.038 (0.176) — 0.036 (0.069) 0.045 (0.018) 0.102 (0.037) 0.102 (0.037) −0.011 (0.000) (0.000) 0.016 (0.514) — — — 0.037 (0.365) — — — −0.042 (0.239) — — — 0.120 (0.000) 0.140 (0.000) — — 0.011 (0.758) — — — 0.024 (0.336) — — — — — 0.083 (0.005) 0.085 (0.005) — — 0.113 (0.000) 0.114 (0.000) — — 0.093 (0.000) 0.100 (0.000) — — 0.039 (0.000) 0.043 (0.000) — — 0.015 (0.000) 0.015 (0.000) — — 0.383 (0.000) 0.389 (0.000) — — 0.034 (0.147) — Box—Cox parameter −0.515 −0.521 0.503 0.497 Log L −153.69 −157.15 68.72 66.96
The estimated parameters for the CLV (LAMBDA) hedonic model (third column) support the importance of both the objective and the sensorial variables. In fact, the dummies for the 1997 vintage (AN97 = 1), for Barolo wines (TYPE = 1), and for a special denomination (DEN = 1) turn out to be positive and significant at the 2% level, whereby confirming our a priori. Turning to the sensorial characteristics, the only significant one is the harmony among wine components (HARM): this finding can be explained as this trait is the easiest among the sensorial ones to be recognized by consumers. Finally, the number of bottles (BOTT) exerts a positive and significant impact on prices.
Table 7. Marginal effects on price
Variable Restricted CVL [ Restricted LS [ 3.25 (0.77) 2.08 (0.56) 1.80 (0.87) 1.91 (0.61) 7.18 (0.84) 4.46 (0.81) 0.04 (0.02) −0.08 (0.02) 4.34 (0.78) – – 1.28 (0.59) – 2.47 (0.84) – 3.36 (0.86) – 2.90 (0.63) – 0.59 (0.09) – 0.07 (0.001) – 12.77 (1.41)
The fifth column of Table 6 presents the results of the LS (LOG-RHS) hedonic model. All coefficients have the expected sign. Moreover, the variables representing individual wine reputation (ECGAM, ECVER, ECMAR) and producer reputation (FIT, FAMA, PREST) are all statistically significant at the 1% level. Estimated coefficients for objective and other characteristics have the same sign as those of CLV (LAMBDA) model, the only exceptions being the dummy for the use of barrique barrels (BARR), which turns out to exert a positive impact on prices, and the quantity produced (BOTT), which proves to have a negative sign. These findings suggest that in a model with only objective and reputation but no taste variables, barrique becomes positive and statistically significant as it conveys information of better wine flavour. The role of the number of bottles appear to differ according to the other covariates in the model: once taste variables are accounted for, it seems to play a reputation effect whereas it plays a 'snob' effect due to the limited availability of a particular bottle in a reputation model.
Table 8. Comparison among restricted CLV and LS models by Vuong (1989) test
LS [ VALR-statisticsa Correction factor: - Hannan and Quinn 6.636 0.000 - Akaike 6.630 0.000 - Schwarz 6.432 0.000
Table 7 shows the marginal effects of the variables included in the restricted CLV and LS models on price.[
Finally, we proceeded to perform the main purpose of this study, namely the comparison of the relative importance of sensorial and reputation factors in determining market prices. To this end, we ran a Vuong ([
Inspection of VALR-statistics reveals that, even applying the correction factor according the highest penalty for the number of estimated parameters (Schwarz, 1979), the model LS (LOG-RHS) significantly outperforms the CLV (LAMBDA) specification, the p-value of the test being always less than 1%. This leads to conclude that the former model is closer than the latter to the true model which generates the data and therefore contains a greater amount of information about the wine price formation. In turn, this finding points to a major role of reputation compared with sensorial traits in explaining differences in the consumers' willingness to pay.
This article aimed at providing new empirical evidence on factors affecting wine prices on both methodological and factual grounds. In particular, building on previous literature, which highlighted the importance of objective, sensorial and reputation variables, the study intended to assess the role played by sensorial characteristics vs. reputation, taking into account the effect of objective variables. To this end, we focused on two premium Italian red wines, Barolo and Barbaresco, whereby filling the gap of no empirical evidence on the issue for Italy, and constructed, through the inspection of wine publications as well as interviews with producers, a database which collects all these sorts of variables.
The results from the general Box–Cox estimation of different sensorial (CLV) and reputation (LS) models, which does not impose a priori restrictions on the form of the hedonic price function, confirm previous evidence obtained using data from countries other than Italy: the consumers' choice with respect to wine is a quite complex process which involves a variety of factors such as objective characteristics, sensorial traits and reputation. However, on the basis of a nonnested statistical test (Vuong, [
The results we obtained have some relevant implications for firms' strategy. Producers' marketing has been recently directed toward the search of an increased quality in terms of improved taste characteristics. Although our findings show that consumers to some extent appreciate these improvements, they foremost suggest that producers should aim at building a well established reputation–both at wine and at firm level–by promotional activities (e.g. participation to wine exhibitions) which facilitate citations in well known guides.
We are grateful to Mark Taylor (the Editor), an anonymous referee, Paola Giordano, Rosalba Ignaccolo, and Alessandro Sembenelli for their helpful comments. We wish to thank also the participants at the 2nd Annual International Industrial Organization Conference (IIOC), Kellogg School of Management, Northwestern University, Chicago, April 23-24, 2004, where an earlier version of this paper was presented. The usual disclaimer applies.
- ALC alcoholic content as it appears on the label of the bottle. As imposed from the Disciplinary Text for Barolo and Barbaresco, the alcoholic degree reported on the label can differ from the actual value determined by chemical analysis by at most ±0.5% vol. Sources: AA.VV. Duemila vini , Associazione Italiana Sommeliers ed., years 2000, 2001, 2002 and direct or phone interviews with producers between July and September 2002.
- AN97 a dummy variable which equals 1 if the wine vintage is 1997 and 0 otherwise.
- BARR a dummy variable which equals 1 if a percentage of the wine passed an aging period in barrique barrels and 0 otherwise. Source: direct or phone interviews with producers between July and September 2002.
- BOTT number of bottles produced for each wine in thousands. Sources: AA.VV. Duemila vini , Associazione Italiana Sommeliers ed., years 2000, 2001, 2002 and the wine ratings database at www.winespectator. com. We checked the information provided by Wine Spectator through direct or phone interviews with producers between July and September 2002.
- COMP a dummy variable which reflects the complexity of the aroma. It equals 2 if the olfactory characteristic is present, 1 otherwise. Sources: AA.VV. Duemila vini , Associazione Italiana Sommeliers ed., years 2000, 2001, 2002 and the wine ratings database at www.winespectator.com.
- DEN a dummy variable which equals 1 if the wine appellation on the label is not just 'Barolo' or 'Barbaresco', but it contains more information (e.g. the vineyard or the indications of the terroir where the grapes are produced, or the word Riserva : these dictions have been intended as indicators of a special wine, i.e. a ' cru ' one) and 0 otherwise.
- ECGAM a dummy variable which equals 1 (0 otherwise) if the wine obtained a 'Tre Bicchieri' award from the Italian wine guidebook 'Guida ai Vini d'Italia' during the 2000 to 2002 period. Sources: AA.VV. Guida ai Vini d'Italia , Gambero Rosso ed., years 2000, 2001, 2002, and the web site www.gamberorosso.it.
- ECMAR a dummy variable which equals 1 (0 otherwise) if the wine obtained a rating higher than 76/100 from the Italian wine guidebook 'Guida dei Vini Italiani' during the 2000 to 2002 period. This threshold is used by the author to identify 'excellent wines'. Source: Maroni, L. Guida dei Vini Italiani , LM ed., years 2000, 2001, 2002.
- ECVER a dummy variable which equals 1 (0 otherwise) if the wine obtained a rating higher than 90/100 from the Italian wine guidebook 'I vini di Veronelli' during the 2000 to 2002 period. This threshold is used by the author to identify 'excellent wines'. Source: Veronelli, L. I vini di Veronelli , Veronelli ed., years 2000, 2001, 2002.
- FAMA a dummy variable which equals 1 (0 otherwise) if the wine producer has been included at least once in one of the following charts:
- • 1992–2002 'Top 100' wines of the year chart, yearly published by the Wine Spectator Magazine. The source is the wine ratings database at www.winespectator.com.
- • 'Outstanding Wine' rating in the chart of Piedmont wines made by Robert Parker. The sources are the web site www.erobertparker.com and Parker, R. Robert Parker's Wine Buyers' guide, 2002.
- • the chart proposed by the Italian wine review Civiltà del Bere (April 2002), which indicates the wine producers that obtained a rating of excellence in 2002 from at least three of the five most important Italian wine guidebooks (Veronelli, L. I vini di Veronelli; Masnaghetti, A. I Vini d'Italia 2002; Maroni, L. Guida dei Vini Italiani; AIS ed., Duemila vini; Gambero Rosso ed., Guida ai Vini d'Italia);
- FINE a dummy variable which equals 2 if the wine is characterized by finesse of aroma, 1 otherwise. The sources are the same as for COMP.
- FINI a dummy variable which reflects the persistence of the taste in the finish. It equals 3 if the finish is long, 2 if it is medium, 1 if it is short. The sources are the same as for COMP.
- FIT total number of 'Tre Bicchieri' awarded during the 1987 to 2002 period to any wine of a producer by the Italian wine guidebook 'Guida ai Vini d'Italia'. The source is the same as for ECGAM.
- HARM a dummy gustatory variable which contemplates the harmony between the components of the wine. It equals 3 if the wine is well balanced, 2 if it is balanced, 1 if it is unbalanced. The sources are the same as for COMP.
- INTE a dummy variable which reflects the level of aromatic intensity of the wine. It equals 3 if the wine's aroma is strong, 2 if it is classic and 1 if it is discreet. The sources are the same as for COMP.
- p price per bottle of wine in current Euros. Data have been collected by direct or phone interviews with the wine producers during the July to September 2002 period. The producers were asked to provide the retail price at which they would sell the wine directly to the consumer in their estate wineshop.
- PREST number of ratings assigned to any wine of a producer during the years by the Wine Spectator Magazine. Source: the wine ratings database at www.winespectator.com.
- TANI a dummy variable which indicates the presence of fine tannins. It equals 2 if there are fine tannins, 1 otherwise. The sources are the same as for COMP.
- TYPE a dummy variable which equals 1 if the wine is a Barolo and 0 if it is a Barbaresco.
- VSPE a variable which indicates the valuation in a 100 points scale assigned to each bottle by the Wine Spectator Magazine if the rating is not missing (452 observations out of 603). The remaining 151 cases have been adjusted according to two criteria: (i) the average Wine Spectator rating obtained from the same wine in other vintages; (ii) the average rating obtained from the same vineyard's and producer's wines. Source: the wine ratings database at www.winespectator.com.
By Luigi Benfratello; Massimiliano Piacenza and Stefano Sacchetto
Reported by Author; Author; Author