The percentage of consumers buying online increased sharply between 2018 and 2022, from 56% to 77% of Internet users in Poland (Gemius Polska, 2018; Gemius Polska, 2022). This phenomenon can be explained by the COVID-19 pandemic and lockdowns, which had an immense impact on online buying behaviours (Gemius Polska, 2022). According to the report by Strategy& (part of PwC network, 2022), the value of the e-commerce market in Poland increased from 48bn PLN in 2018 to 92bn PLN in 2021 and is estimated to reach 187bn PLN in 2027 (Strategy& — PwC, 2022). E-commerce has been also steadily increasing its share in the retail market from 8% in 2018 to 12.9% in 2021 and is estimated to reach 17% in 2027 (Strategy& — PwC, 2022).
Price remains the most crucial factor when shopping online and is more important than when shopping offline: depending on the category, 56% to 63% of the respondents pointed price as the most critical factor when buying online, while 43% to 55% of the respondents regarded price as the most important factor when purchasing offline (YourCX, 2021).
Over time, offline retailers facing competition from online retailers realised that one way to respond to this threat is to add their own online channels and take advantage of the potential synergies between the two channels. This ongoing transition of many retailers from pure-play (i.e. offline-only or online-only) to multichannel retailing gave rise to many strategic questions (Ratchford, Soysal, Zentner, & Gauri, 2022).
One main advantage of the online compared to the offline channel is lower distribution costs. This advantage stems from the ability to store products online in a few remote warehouses vs. the need to store products offline in several (often hundreds of) physical stores. Physical stores have shelf and storage space limitations and need to be situated conveniently to customers, and hence are associated with much higher overall real estate costs than remote warehouses (Ratchford et al., 2022). Moreover, offline formats have an advantage in offering the services of personal inspection and immediate delivery, while online channels eliminate travel time and geographic constraints and may be able to provide more extensive assortments at a lower cost to the retailer (Betancourt, Chocarro, Cortinas, Elorz, & Mugica, 2016).
Given the fast development of online retail, the price being the most critical factor when buying online and cost and value to customer characteristics of online and offline, the usage of price differentiation strategy by retailers becomes one of the priorities for research in digital marketing (Kannan & Li, 2017). Although the differentiation strategy might seem tempting, researchers have expressed doubts about whether companies can ‘actually charge different prices for the same item in different channels’ (Neslin & Shankar, 2009, p. 79) because ‘consumers may perceive inconsistent prices offline and online [as] unfair’ (Li, Gordon, & Netzer, 2018, p. 828).
Following a Framework for Multichannel Customer Management (Neslin et al., 2006), we add to the research in the area of coordinating channel strategies, specifically on the issue of coordinating the prices across channels. With two empirical studies, we aim to answer the following questions: (RQ1) do multichannel retailers engage in price differentiation between online and offline channels, and if so, (RQ2) what strategies do they involve in relation to product category, product absolute price and the product popularity.
This article is organised as follows: Section 2 describes the existing literature on channel-based price differentiation in retail; Section 3 outlines methodology; Section 4 is dedicated to results and discussions of Study 1. and 2. responding to RQ1 and RQ2, respectively; and Section 5 covers conclusions, limitations and recommendations for future research.
The existing literature on the interaction of online and offline channels in a multichannel retailer mainly focused on the effect of adding one channel to an existing other channel. The main conclusion from this stream of research is that the online channel does not necessarily significantly cannibalise or threaten the survival of the offline channel (Ratchford et al., 2022).
When it comes to channel-based price differentiation, before going any further, price differentiation (or discrimination) and price dispersion should be distinguished. While the former is done by the same retailer or manufacturer, the latter is a result of different pricing by different competing companies (Reinartz, Haucap, Wiegand, & Hunold, 2017).
Channel-based price differentiation has been mainly researched from three perspectives: theoretical research assessing optimal retailer behaviour, observational research studying how retailers behave today and empirical research exploring consumer behaviour towards practices of channel-based price differentiation (for literature review, refer to Fassnacht & Unterhuber, 2015).
The latest research on pricing in a multichannel environment covers the cross-channel effects of price promotions on category purchase decisions for multichannel grocery retailers (Breugelmans & Campo, 2016), the role of competitive forces in geographic pricing decisions (Li et al., 2018), price differentiation related to shipping options (Hammami, Asgari, Frein, & Nouira, 2022) or retailers’ adoption (or non-adoption) of self-matching across a range of competitive scenarios (Kireyev, Kumar, & Ofek, 2017).
Customers’ perception of fairness in channel-based price differentiation remains an important research topic. Bondos (2016) analysed image consequences that might lead to unfavourable consumer purchasing behaviour changes. Further research concentrated on price (un)fairness perceptions in personalised pricing (Richards, Liaukonyte, & Streletskaya, 2016; Hufnagel, Schwaiger, & Weritz, 2022) or regarding pay-what-you-want (PWYW) induced price discrimination across channels (Narwal & Nayak, 2020).
On the other hand, research shows that price differentiation might not necessarily evoke negative perceptions among customers. Fassnacht and Unterhuber (2016) concluded that price differentiation with lower online prices was quite well accepted by consumers and that providing a rationale for a price difference between the online and offline channel by communicating information on the difference in costs between the channels could have a positive impact on fairness perception. Homburg, Lauer, and Vomberg (2019), who studied consumers’ attitudes toward channel price differentiation, found that offline premiums are particularly feasible for high-priced products and low-priced take-away products.
Despite the possible customers’ acceptance of particular price differentiation strategies, research shows that this strategy is not widely used among retailers. Price dispersion analysis on the U.S. market suggested that retail managers may plausibly consider price discrimination across stores to be infeasible (Hitsch, Hortaçsu, & Lin, 2021). Wolk and Ebling (2010) found that retailers still applied a consistent price strategy for the majority of their products (77.45% and 65.7% in 2 studies), given price differentiation, the majority (73.42% and 62.98% in 2 studies) of products were offered at higher offline prices. Similarly, Cavallo (2017) reported that in large, multichannel retailers, there is little difference between the online price collected from a website and the offline price obtained by visiting the physical store: prices were identical about 72% of the time. Ancarani, Jacob, and Jallat (2009) reported that the list prices were lower online than offline, but the difference between online and offline list prices was minimal (within 8%). Similarly, Reinartz et al. (2017) reported in their study that 80% of product-specific average prices are cheaper online than offline.
In summary, the issue of whether to apply a price differentiation strategy or not remains unresolved for retailers offering multichannel experience (e.g. Kannan & Li, 2017), requiring research to investigate the extent to which price differentiation occurs between channels and why it occurs (Homburg et al., 2019).
Study 1 was to identify multichannel retailers who applied price differentiation between online and offline channels. As reported by Gemius Polska (2022),
Study 2 focused on those retailers who were identified to perform price differentiation between online and offline channels. Data scrapping using Python was performed to collect the prices in the course of November 2022. For Empik, product choice was based on top 100 rankings per product category available at the retailer’s webpage, and seven categories were analysed:
Study 1 aimed at identifying multichannel retailers applying price differentiation between online and offline channels. Among the retailers in scope, the majority of them offered information about the prices online and offline on their websites. They did it using the
As shown in Table 1, for a majority of the retailers, the channel price differentiation strategy was not observed. This is in line with previous research (Wolk & Ebling, 2010; Cavallo, 2017; Hitsch et al., 2021) that, despite possible customers’ acceptance of channel price differentiation, the retailers are not widely applying this strategy. For retailers that offer highly differentiated products (exclusively or with a high percentage of own-label items) for which direct price competition with online retailers is limited, this strategy seems to be justified as it prevents from any unfairness perceptions from customers. However, for retailers that offer nationwide brands, for which the direct price comparison with online retailers is at almost no cost to customers, such a strategy might comprise a threat to retailers’ profitability as the costs of offline operations are higher (Betancourt et al., 2016; Ratchford et al., 2022).
Retailers applying channel price differentiation
Sector | Retailer | Search button/search path | No. of categories | No. of items | Channel price differentiation | Offer uniqueness | Verified |
---|---|---|---|---|---|---|---|
Apparel | H&M | Znajdz w sklepie | 8 | 45 | No | High | Online |
Reserved | Sprawdz dostępność w salonach | 4 | 20 | No | High | In store | |
Shoes | CCC | Dostępność produktu w sklepach | 2 | 10 | No | High | Online |
Cosmetics and perfume | Rossmann | 3 | 20 | No | Mixed | In store | |
Multimedia | Empik | Zarezerwuj w salonie | 7 | 30 | Yes | Mixed | Online |
Home electronics and appliances | RTV Euro AGD | Obejrzyj w sklepie → | 6 | 30 | No | Mixed | Online |
Zarezerwuj i odbierz w sklepie juz za godzinę! | |||||||
Media Expert | Dostępność w sklepie → Odbierz za godzinę! | 6 | 30 | No | Mixed | Online | |
Home and garden | Ikea | Produkt → Sklep dostçpny | 6 | 25 | No | High | Online |
Castorama | Sprawdź dostępność w innych sklepach | 6 | 30 | No | Mixed | Online | |
Leroy Merlin | Sprawdź dostępność w sklepie i zamów | 6 | 30 | No | Mixed | Online | |
Kids | Smyk | Sprawdź dostępność w sklepie stacjonarnym | 5 | 25 | Yes | Mixed | Online |
Sport | Decathlon | Darmowy odbiór w sklepie | 5 | 25 | No | High | Online |
Source: Authors’ elaboration.
Among retailers in scope, only Empik and Smyk were found to perform channel price differentiation. For their offer of mixed uniqueness (nationwide brands and own-label or own-collection items), this strategy allows them to offer prices competitive to online retailers, while it also allows to recover higher costs of offline operations.
Among retailers in scope, only Empik and Smyk were found to perform channel price differentiation. For their offer of mixed uniqueness (nationwide brands and own-label or own-collection items), this strategy allows them to offer prices competitive to online retailers, while it also allows to recover higher costs of offline operations.
Study 2 aimed at assessing the direction and extent of price differentiation performed by retailers who applied it. Both retailers in scope displayed similar patterns. Overall, 75% of Empik products were cheaper online, 3% were cheaper offline, and no price difference was observed for 22% of the products. In total, 78% of Smyk products were cheaper online, 8% were cheaper offline, and there was no price difference in case of 14% of the products (see Table 2).
Products cheaper online, offline and with no price difference
Category | Cheaper online | No difference | Cheaper offline | |||
---|---|---|---|---|---|---|
Books | 95 | 99 | 1 | 1 | ||
Films | 75 | 96 | 2 | 3 | 1 | 1 |
Games apps | 25 | 34 | 45 | 62 | 3 | 4 |
Music | 73 | 78 | 19 | 20 | 1 | 1 |
Own collections | 29 | 40 | 41 | 57 | 2 | 3 |
Stationery | 66 | 89 | 7 | 9 | 1 | 1 |
Toys | 30 | 73 | 1 | 2 | 10 | 24 |
Apparel/shoes/kids | 16 | 18 | 72 | 80 | 2 | 2 |
Books | 63 | 94 | 1 | 1 | 3 | 4 |
Kid/mother | 81 | 79 | 2 | 2 | 20 | 19 |
Stationery | 44 | 88 | 6 | 12 | ||
Toys/games | 233 | 92 | 3 | 1 | 17 | 7 |
Source: Authors’ elaboration.
For Empik, online prices were, on average, consistently lower than offline prices across all categories. As presented in Table 3, the biggest price difference was visible in the books category, with the online prices being, on average, 37% lower. Stationery and films were 22% cheaper online. Remaining categories exhibited price discounts less than 10%. The total average was 16.9%.
Online to offline discount. Descriptive statistics per product category
Empik | Smyk | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
Books | Films | Games/apps | Music | Own collections | Stationery | Toys | Apparel/shoes/kids | Books | Kid/mother | Stationery | Toys/games | |
N | 96 | 78 | 73 | 93 | 72 | 74 | 41 | 90 | 67 | 103 | 50 | 253 |
Mean | −0.3745 | −0.2201 | −0.0295 | −0.0893 | −0.0918 | −0.2204 | −0.0627 | −0.0297 | −0.2583 | −0.0941 | −0.1280 | −0.1966 |
Std. Dev. | 0.0597 | 0.1997 | 0.0668 | 0.0619 | 0.2010 | 0.1239 | 0.3575 | 0.1237 | 0.1138 | 0.3708 | 0.3247 | 0.1992 |
Min | −0.4999 | −0.8502 | −0.2721 | −0.2668 | −0.4447 | −0.4604 | −0.6002 | −0.3334 | −0.5072 | −0.5774 | −0.4584 | −0.5001 |
Max | 0.0000 | 0.2456 | 0.0786 | 0.0004 | 0.8052 | 0.0629 | 1.2081 | 0.7647 | 0.1541 | 1.6660 | 0.9990 | 1.5554 |
Source: Authors’ elaboration.
For Smyk, we observed a similar pattern with products being cheaper online than offline. Except for
Another research question of this study was if online vs. offline price differentiation was related to top/bestsellers ranking or absolute price of the products. Spearman’s correlation coefficients for these variables are displayed in Tables 4 and 5. As far as top ranking was concerned, statistically significant negative correlations were estimated for
EMPIK. Spearman’s correlations between online to offline discount (%) and top ranking or absolute price level
Spearman’s | Games and apps | Films | Own collections | Books | Music | Stationery | Toys |
---|---|---|---|---|---|---|---|
Top ranking | −0.1052 | −0.617** | 0.283* | 0.0209 | −0.415** | 0.0426 | −0.1027 |
Games and apps | −0.2258 | ||||||
Films | 0.0039 | ||||||
Own collections | 0.2069 | ||||||
Books | −0.0193 | ||||||
Music | −0.312** | ||||||
Stationery | −0.2165 | ||||||
Toys | −0.2857 |
Source: Authors’ elaboration.
Smyk. Correlations between online to offline discount (%) and top ranking or absolute price level
Spearman’s | Toys/games | Apparel/shoes/kids | Kid/mother | Stationery | Books |
---|---|---|---|---|---|
Top ranking | 0.0862 | 0.273** | 0.310** | 0.314* | 0.1150 |
Toys/games | .146* | ||||
Apparel/shoes/Kids | 0.0306 | ||||
Kid/mother | −0.353** | ||||
Stationery | −0.391** | ||||
Books | −0.373** |
Source: Authors’ elaboration.
As we could see, the strategy for multichannel price differentiation across top/bestsellers lists was not consistent among the categories. One could argue that for categories with low offer uniqueness (
When it comes to the question of the relation between the price differentiation strategy and the absolute price level of the product, four categories displayed statistically significant negative relation between these variables:
In summary, this research confirmed previous results (Wolk & Ebling, 2010; Cavallo, 2017; Hitsch et al., 2021) that online vs. offline price differentiation was not widely used by the leading multichannel retailers in the most popular categories bought online: only two out of 12 retailers elicited for the study were found to perform it. It also confirmed previous findings that if price differentiation was applied, the items were cheaper online more often: 76% of cases vs. 80% reported by Reinartz et al. (2017). However, the average depth of discount was considerably higher: 16.04% vs. 8% reported by Ancarani et al. (2009).
Apart from these general findings, our research delivered detailed insights at the category level as the depth of discount and the share of products sold at a discount online considerably differed across product categories. For categories with the unique offer (e.g.
The limitation of this study is that data collection was performed in one wave, while the repetition of the study could bring additional insights. Another limitation is that it focused on the leading multichannel retailers in the most popular categories bought online. At the same time, other retailers might be performing channel price differentiation strategies not elicited for this study. Furthermore, as the customers’ perception of fairness has been previously reported as a possible obstacle for retailers to implement online vs. offline price differentiation, future research could investigate Polish consumers’ attitudes toward this strategy. Finally, as this strategy aims at profit maximisation through the recovery of higher costs of offline operations, the profitability angle would also be an interesting path for future research.