Developing high-quality ICT infrastructure in an organisation requires caring for the following synergetic aspects: hardware, software and humanware. Consequently, building a measurement tool to measure ICT development in an organisation requires the same. In this study, the term “ICT development” refers to establishing a prerequisite ICT infrastructure considering all three aspects mentioned above. Therefore, we propose a composite indicator to aggregate these aspects into a single estimate suitable for benchmarking with other organisations to measure the observed phenomenon.
3.1. Organisational ICT Infrastructure Indicators
The proposed Composite Indicator of Organisational ICT infrastructure (CIOICTI) is developed from the older Composite Index of ICT Adoption (CIICT) [
42], and therefore it is meant to be an upgrade compared to its predecessor. This means we used the old CIICT component structure as the starting point to build the CIOICTI: five indicators to measure specific aspects of ICT infrastructure and one product component to capture synergetic ICT effects within organisation. A decade-long experience in ICT-related projects proved the concept of the CIICT but also gave us an opportunity to identify potentials for improvement. These improvements led us to the main prerequisites for establishing high-quality ICT infrastructure in an organisation. These prerequisites include necessary ICT equipment, a highly developed internal network, high coverage of the work operations with the ICT, the integrated database and the existence of necessary ICT support. In order to estimate the ICT development level in an organisation, one needs to assess the level of development of each one of the previously mentioned prerequisites. To achieve this, we used several individual indicators, each one to estimate one the aspects mentioned above. Following the composite indicator creation guidelines [
47,
48], we aggregated the selected indicators into a new composite formula to measure ICT development in an organisation. This tool can be helpful to decision makers in managing ICT development in a business organisation.
The first step in constructing a composite indicator was to look for the components—individual indicators used to build a composite measure. As mentioned, we started from the known set of ICT adoption indicators used to create the CIICT and used our consulting experience to improve indicators to measure the quality of the organisational ICT infrastructure.
To estimate the necessary ICT equipment level in a business organisation, we used a simple but effective indicator called “Number of computers per employees” (
NCE). It is calculated as the following ratio:
where
NC stands for the number of computers in an organisation, and
NE represents the total number of full-time employees, both with limited and indeterminate employment contact. The same indicator was used by Cudanov et al. (2009) [
42].
NCE is a straightforward but effective indicator that can be easily calculated, giving decision-makers hints about the basic ICT infrastructure in an organisation. In a wider sense, “computers” do not only need to be desktops/laptops but also tablets, handheld devices, etc.
Another important aspect of ICT infrastructure is to estimate the level of internal network development in organisations. A highly developed internal network speeds up the internal communication process, making the organisation more efficient. We use the indicator called “Internal network coverage”:
where
NCC represents the number of computers that are connected to the internal network in an organisation. Again, this indicator should be carefully assessed. While most computers in the corporate environment are technically connected to the internal network, using its benefits is not so common in the business organisation. Intranet services are neglected or used fragmentally, and this whole indicator can be weighted by the intensity of usage. For example, a bit extreme but possible case can be that 90% of computers are connected to the intranet but in average use only 20% of its functionalities. Researchers can weight the 90% with 20% usage and by multiplying obtain 18%, which is a more precise measurement than 90% for
INC in this case.
Further, to estimate what part of the business activity is covered with the ICT, we use the indicator called “Average Coverage of Business Functions with ICT”, calculated with
where
CBFi stands for Coverage of
ith business function with ICT representing the percentage of work within the business function
i that is achieved with ICT support. We use the average rather than the simple sum, which was used by [
42]. The main reason for that is the practical gathering of data, which can be biased if some business functions are missing or rudimentary, and it is illustrated with a simple example given in
Table 1, showing the difference between the two approaches.
In the previous table, HR stands for the human resource function, Acc. for accounting, Fin. for financial function, Tech. for technical core, Com. for commercial function, Leg. for legal, Sec. for corporate security and Admin for administrative (overall management) function. If some of the mentioned functions are not present in the organisation (at least sufficiently to be a distinctive part of organisational structure), it is represented by the “-”sign, while the “0” means the function is present, but ICT does not cover its operations at all.
Gathering data from the companies in practice while using the old, simple sum approach to calculate the “Coverage”, companies CA and CB emerge with the highest of business functions’ operations ICT coverage. In the new approach, the average value shows a completely different situation, giving the company CC’s advantage, which has only three business functions differentiated in its organisational structure, but all three are completely covered with the ICT. The average function used in ACBF made this factor independent of the organisational structure, which was not the case in the old approach.
Another important aspect is database integration. It is a fundamental precondition for the full utilisation of the ICT and its positive effects on productivity. The highly integrated company database offers the fast and reliable exchange of data and information between business functions/units and additionally external stakeholders, fulfilling the goal of ICT infrastructure. It is useful in the implementation of ERP [
49] and is observed in cloud-based ERP [
50]. To measure database integration in a company, we use “Average integration of database”:
where
IDBi indicates integration of the local database (on the level of
ith business function) into the global company’s database.
IDBi is a binary variable;
IDBi = 1 if the local database is integrated into the main organisation’s database (the most usual case with integrated information systems such as ERP) and
IDBi = 0 if the local database is not integrated. The old CIICT formula used a binary variable to describe database integration as an answer to a simple Yes/No question: “Is your company’s database integrated?”. The binary variable was too rigid to describe possible situations in companies with partially integrated databases. The proposed indicator can make a better gradation among companies and describe more possible cases.
The final aspect of ICT infrastructure is humanware—a necessary ICT support as a precondition for effective use of the ICT in a company, as hardware and software are often underutilised without the necessary administration. We use a binary variable denoted as “ICT support” to describe the humanware aspect of ICT development. The proposed variable has a value equal to 1 if there is complete ICT support available in a company or equal to 0 if there is no such support. In medium and large companies, this ICT support is observed through the existence of special ICT/IT departments, while small companies have dedicated employees often called a “database administrator/engineer” or “system administrator/engineer”. If the formula user estimates that subjective assessment of the value within the interval is better than binary objective assessment, with explanation, a value between 0 and 1 weighted by the quality and availability of that support can be given, e.g., 0.8. Following the logic of the common business system, future collection of ICT support data can gather information from the basic business functions/sectors on the proposed scale and then calculate the arithmetical average or use advanced methods such as AHP to aggregate the different responses. That provides much more precision and accuracy but needs significant resources to gather the data.
In the following
Table 2, we present summary information on the indicator set used to create the composite measure. Each one of the indicators from the table estimates one specific aspect of ICT infrastructure.
3.3. Normalisation
Further, we normalised selected indicators in order to bring them to the same unit interval, to avoid “adding up apples and pears” [
51]. There are numerous normalisation methods such as standardisation, re-scaling, ranking, etc. To select an adequate normalisation method, we investigated the basic statistical properties of the selected CIOICTI components, shown in
Table 4.
The value range analysis shows that all of the selected indicators except NCE are in the unit interval [0, 1]. While, in theory, there is no upper limit for the NCE, in practice, the employee is expected to use three computer devices at most—one desktop, one laptop and one handheld device. Extreme cases such as server farms are not considered since employees do not directly use server computers to perform business tasks—the company uses it as a raw computing resource power. Therefore, we need to apply some normalisation method to this component. The normalisation method should also take into account the objectives of the composite indicator besides the data properties [
51]. For example, one should think about whether exceptional behaviour needs to be rewarded/penalised when the composite indicator is created.
The authors intend to develop a general rather than industry-oriented indicator, which can be used to compare companies from different industry sectors. Hence, there is a necessity for disabling discrimination in some industry sectors; positive discrimination of companies in the ICT-related industries—companies with high values of the NCE ratio (e.g., software engineering companies, computer training schools, banks, etc.) and negative discrimination of labour-intensive companies (those with low values of this ratio). To achieve this, we use specific transformation to trim the tail of the indicator distribution to avoid its extreme values and create a bigger gap in the index value between the ICT-oriented and labour-oriented companies. The proposed transformation is
3.4. Aggregation and Weighting
The issue of aggregation of the information is the central one in the process of constructing a composite indicator. Different aggregation functions are possible (
Section 2). Linear aggregation using the arithmetic mean implies full compensability, i.e., poor performance on some indicators can be compensated by sufficiently high values of other indicators [
51]. On the other hand, nonlinear aggregation using the product function entails a partial compensability (i.e., compensability is lower when the composite indicator contains indicators with low values), rewarding those with higher scores. In this study, we use both linear and geometric approaches.
During our research, we built a version of the composite indicator using linear aggregation of the selected components, but it proved to be insufficient to describe the observed phenomenon. For example, consider a company with a high number of computers per employees and a high coverage of business functions’ operations with the ICT, but a low-to-medium level of database integration. Our consulting experience has taught us that the level of ICT development in such a company should not necessarily be considered the highest. This gave us an idea that there exists some sort of nonlinearity that should be taken into consideration when measuring ICT infrastructure. For this reason, we assume that all individual factors (NCE, ACBF, AIDB and ICTS) have an even more significant influence on the level of ICT development if they all highly developed within a business organisation. This emphasises the importance of partial compensability. Many authors previously described a similar effect [
42,
52,
53]
We model the composite indicator (CIOICTI) using two aggregation functions: the weighted arithmetic mean and product. The weighted aggregated mean is the most commonly used way to build composite indicators. We use it to enable full compensation while adding CIOICTI components together. To incorporate previously explained the nonlinear synergetic effect in ICT infrastructure development, we use the product function of individual components (indicators). The following is the proposed CIOICTI formula:
The first part of the CIOICTI is the weighted sum of the selected indicators—the common approach to create the composite indicator. The second part of the CIOICTI is the product of the selected components. It is aimed to reward those organisations that could create a synergetic effect having developed all elements of ICT infrastructure or to punish those organisations who lack some parts of ICT infrastructure. These two parts are weighted using and . Further, within the first part of the composite index, individual indicators are weighted separately. Finally, the sum of two parts is multiplied by 100 since we projected the CIOICTI to be in the value range.
The issue of aggregation comes together with the weighting. Weights are assigned to components to control their influence on the resulting composite value and reflect their significance (economic, statistical, etc.); thus, weighting models need to be made explicit and transparent [
51]. Numerous weighting techniques are commonly used: factor analysis, analytical hierarchy process (AHP) and weighting based on experts’ opinions. Moreover, one should keep in mind that weights are essentially value judgments no matter which method is used; it must be used to indicate explicitly the objectives underlying the construction of a composite indicator [
51,
54]. In this study, we use an expert-based approach to assign weights according to our consulting experience and in accordance with the following objectives:
Aggregate influence of individual components (first part of the CIOICTI) should be dominant, but at the same time the synergetic effect of ICT infrastructure (second part of the CIOICTI) should have a significant influence on the composite measure.
Within the first part of the CIOICTI, individual indicators should be equally weighted to avoid overweighting some of the aspects (hardware, software and humanware) of the organisational ICT infrastructure.
Having these objectives in mind, and based on our consulting experience, we propose the weighting scheme in
Table 5.