Randomized Estimation of the Net Present Value of a Residential Housing Development

Randomized estimation of the net present value of a housing development allows for the assessment of the efficiency of projects in random implementation conditions. The efficiency of a project is estimated on the basis of primary input data, usually used in project planning. For this purpose, random disturbances are identified that may randomly affect the course and results of the project. The probability and severity of disturbances are determined. The primary initial data is then randomized, and a randomized probabilistic index of the project’s net present value is calculated, the value of which indicates whether the project is profitable or whether implementation should be stopped. Based on this data, the expected total revenue, the expected total cost, the expected gross profit, and the net present value of the randomized performance of the project are calculated. The values of these are estimated for expected, favorable, and unfavorable conditions of implementation. Finally, the risks for the total revenue and total cost of the project are calculated and plotted for comparative revenue values in the range [1, 0] and cost in the range [0, 1]. Their analysis makes it possible to make the right investment decisions before starting the investment at the preparation stage.


Introduction
The term efficiency [1][2][3][4][5] in a general sense describes the achievement of objectives in an economic manner. It is a search for a good balance between the resources used (time, money, space, equipment, and materials) and the achievement of the objectives of the activity [6].
The term efficiency is a measurable concept that can be applied to the quantitative assessment of production or performance when a given number of resources (money, time, work, etc.) has been used. All well-known methods of assessing efficiency, although they consider the time value of money, actually use deterministic data. The results obtained in this way are also deterministic. In such cases, the efficiency is usually measured as the ratio of useful result ("product") to total outlay. It can be expressed with the mathematical formula E = P/C that is the ratio of the amount P of useful result (benefit) of project implementation to the amount (cost) C of consumed resources.
Generally, these indicators are reliable and well describe efficiency when the project would be implemented in stable and balanced economic and environmental conditions. Usually, inner and outer random events can strongly affect the project implementation. Such disturbances can increase costs and decrease revenues of the project [7,8].
In published books and papers relevant to the project lifecycle, problems However, because of random conditions of project implementation, the better approach is probabilistic analysis when the efficiency of the project implementation can be characterized as a random variable.
The term of risk (probabilistic conditions) means that a situation in which the result of the project is unknown, uncertain, or there is a possibility that something will succeed or fail, and the probability of the random events appearance and project execution according to the plan is known or it can be estimated. These problems have been studied by Cao, J., Song, W. 2016 [12], Radło M. J. 2015 [13], Kalkhoran S. H. A., Liravi, G., Rezagholi F. 2014 [14], Stephen C Ward, S. C., and Chris B Chapman, Ch. B. 1995 [15], et al. Here, the risk conditions describe circumstances in which individual capabilities and benefits associated with each possible action within the project are known or can be predicted with some probability-the probability of possible conditions of the project implementation is known or can be reliably estimated. In the conditions of risk variability, different random disturbances can interfere with the process of project implementation. In the aftermath of these disturbances, the impact variability of technical, technological, social, economic, and environmental random factors can impede or preclude the project accomplishment according to the design documentation and technical specification of the works execution and acceptance [16].
These may randomly increase prices and consumption of labor and resources, expenditures of machinery and equipment and reduce the productivity of project executors.
So, in random conditions, the efficiency is a random variable and must be estimated, taking into account the impact of random disturbances on course and results of the project lifecycle implementation [17,18]. This is a process of creating random variables of costs and revenues as well as connected and derived quantities that reflect likely random conditions of the construction project's implementation. Based on the randomized data, the proposed method of estimating the net present value of the construction project's efficiency can be estimated. The method should be applied when random disturbances can disturb or disrupt the project implementation. That is, in a situation, during the project implementation there are likely disturbances that can randomly change the cost, time, and quality of projects.
The method of assessing the effectiveness of unstable construction projects in the conditions of the impact of significant disturbances on the course and results of implementation uses specific concepts and mathematical formulas in a different scope and at different stages of the investment.
The end result of the presented method is a reliable estimation of profitability and a realistic assessment of the cost-benefit balance of unstable construction projects already at the planning stage.
Often, a distinction is made between economic and technical efficiency. Economic efficiency means producing and distributing goods at the lowest possible cost. Technical efficiency means the maximum amount of production for a given input, or the maximum amount of an output that can be obtained from a certain input.
In many studies, the term "efficiency" is often used to evaluate economic activities (Blue Book, [19]). From this point of view, economic and financial efficiency are most often distinguished.
The randomized method for estimating the net present value of a construction project's efficiency has been worked out recently. The method has been theoretically finished and verified on simple examples of projects. However, the method is still being tested and verified in the process of estimating the net present value of the housing investment's efficiency.
So, the objective of the research was to verify the correct probabilistic method for the analysis and assessment of the net present value of the effectiveness of unstable construction projects for real building investments.
In the article, research results for real building investments by the randomized method of the estimation of construction projects' efficiency are presented.
Such building investments have been realized by a developer in Warsaw, the capital city of Poland. Here, the randomized method of efficiency estimating of the net present value of one such residential housing development's efficiency is presented.
The subject of the study is one of the stages of a five-stage construction of a residential housing development in Warsaw. The settlement was built by a Warsaw real estate developer. The development area takes up approximately 1.3 hectares of land. Inside this area, six multi-family buildings of different size, set on a single garage plate, have been built. Complete with the buildings, some concomitant facilities have been built, for example, new public roads, additional parking spaces, and usable premises. The residential housing development has been built in the system of a general contractor. Implementation cycle of the project consisted of four basic stages, namely: feasibility study (6 months), designing (12 months), construction (18 months), and operation and maintenance (60 months). However, the stage of operation and maintenance concerned only activities resulting from the general guarantee and warranty for defects. The efficiency analysis was carried out as part of the feasibility study. In the first stage of the analysis, the project life cycle was projected, i.e., the stages of implementation and tasks cost of these stages, as well as tranches of revenue payments. Moreover, in this stage, discount rates were established, and the types of random disturbances of the project implementation were determined. In the case of this project, the primary initial data were developed collectively by the team for the real estate purchases and the team for analysis and preparation of investments. The teams identified and estimated this data, taking into account the predicted conditions and projected prices in the country for the entire project lifecycle implementation. The discount rate was determined on the basis of historical data of the investments realized by the developer and accordingly to the current market forecasts. The investment in the initial phase, such as all investments of this company, was financed by an operating loan for the activities of the developer. The first and second tranches of payment were flown in with the start of sales of the first and second parts of the apartments, respectively. The third and fourth tranches of revenue payments began with the start of sales of concomitant facilities, such as parking lots and commercial premises. Detailed tally of the project cost and revenue was shown in spreadsheets later in the case study. In random implementation conditions, costs and revenues of the project can be disturbed by random disturbances. Such cost random disturbances have been defined in accordance with conditions and requirements of the project stages and tasks implementation, whereas revenue random disturbances have been projected in accordance with likely prices on domestic and foreign property markets, as well as conditions and quality of business environment. Unfortunately, until now, the impact of the disturbances on the course and results of the project was analyzed mostly qualitatively. In this way, both costs and revenues were estimated approximately only on the basis of experience and knowledge of the analysts. The company has not used yet any probabilistic method that would have allowed quantitative analysis and estimation of costs and revenues when random disturbances may have an impact on the project implementation. The randomized method of estimation of the net present value of a construction project's efficiency were developed in order to bridge this gap. It is assumed that such an analysis would be carried out in the "feasibility study" stage and could be used by teams that are also currently involved in the planning of construction projects.

Materials and Methods
Estimation of the primary initial data is the first phase of the randomized estimation of the net present value of the residential housing development's efficiency. These data are the basis for further analysis and data randomization for the estimation of efficiency. They directly describe the kinds and values of parameters and characteristics of the project implementation. In the primary analysis, based on an in-depth analysis of the facilities structure and the construction conditions, the residential housing development implementation cycle has to be projected. Such a lifecycle has been defined in a similar way by De Wilde, P. 2018 [20], Ding, L., Zhou, Y., Akinci, B. 2014 [21], Halpin, D. W., Woodhead R. W. 1998 [22], Ritz, G., 1994 [23], et al. In this meaning, the construction project lifecycle consisted of several successive stages 1,2, … , . In each stage, the subset of tasks should be executed, : 1,2, … , . During the project lifecycle implementation, the set of all tasks of the project should be carried out, : 1,2, … , : 1,2, … , . Consistently, for each subset of tasks , the subset of the initial preliminary execution costs should be estimated, : 1,2, … , . In this way, the subsets , 1,2, … , contain all costs , and each stage , of the project and form the set : 1,2, … , : 1,2, … , . According to the stage of construction, the apartments and other facilities can be sold after some objects are finished, or they can be sold after the whole residential housing development' completion. Each sold part represents one tranche of revenue , 1,2, … , . All paid tranches of revenues constitute the set : 1,2, … , . Because of money value changes in time, for both costs and revenues discount rates, paid per year should be set. The primary initial data of costs for the residential housing development implementation cycle can be determined as follows: 1. Stages s and subsets of task , and subsets of cost : feasibility study-s1, the subset of tasks , , 1,5 and the subset : 1,5 of costs : -initial analysis and its cost .
-land acquisition and its cost .
-determination of the technical conditions and its cost .
-coverage of overheads and its cost .
-tracing of economic and financial conditions and its cost ; design documentation development-s2, the subset of tasks , , 1,6 and the subset : 1,6 of costs : -initial concept and nets and their cost .
-conceptual architectural design and its cost .
-general conceptual design and its cost .
-construction project and its cost .
-detailed design (executive project) and its cost .
-complementary design documentation and its cost ; construction-s3, the subset of tasks , , 1,8 and the subset : 1,8 of costs : -construction site development and its cost .
-structure of construction, state zero, and its cost .
-plumbing and electrical wiring, state zero, and its cost .
-structure of construction-superstructure and its cost .
-plumbing and electrical wiring-superstructure and its cost . The basic primary initial data of revenue for the residential housing development implementation cycle can be determined as follows: 1. The set B of tranches and the set P of the revenues , : 1,4 , : 1,4 : -sale of apartments-part 1 and revenue .
-sale of apartments-part 2 and revenue .
-sale of parking lots and revenue .
-sale od usable premises and revenue .
In the case of the residential housing development implementation, the primary initial data for costs have been listed in Table 1 and for revenues in the Table 2 in the chapter Results. In Tables 1 and 2, project primary initial costs and revenues were discounted by the use of formulas and , respectively. In this way, one can define the set : 1,2, … , : 1,22 of discounted costs of tasks execution and the set , 1,2, … , , 1,4 of discounted revenues paid in tranches .
The primary initial data describe project implementation without taking into account likely influences of random events on the course and results of the project. In practice, it can cause incorrect estimation of the costs and revenues of the project. In order to take cognizance of such disturbances, the primary initial data must be randomized.

Estimation of the Impact of Disturbances on the Task's Costs and the Revenues Tranches
Here, randomization means transforming the deterministic primary initial data into probabilistic computing data. Such modification should be undertaken when future random inner and outer disturbances can significantly impact and change the values of project costs and revenues. This is a process of creating random variables that reflect likely random conditions of the project implementation. In this area, the issues of costs that must be incurred on a project task's execution and questions of revenues that should be paid in tranches for the completed tasks have to be analyzed.
As part of the cost analysis, it is necessary to analyze probabilistic characteristics of cost random variables depending on internal and external random disturbances related to the cost of project tasks implementation. In the considered situation, the sets , 1, , of tasks may be disturbed by relevant sets of disturbances , , , : 1,2, … , , 1,2, … , . In the result, costs of tasks may randomly change. In the analyzed case, the sets as well as disturbances , that belong to them are relatively independent of each other. Each set of disturbances , correspond with a particular stage s. This means that the execution of each task ∈ may be randomly affected by each threat , ∈ . All disturbances of costs must be identified for projected places, environment, and system surroundings of the project.
For the residential housing development sets , : 1, , 1, , 1,4, of disturbances , related to sets : 1, of tasks have been identified as follows: Stage of feasibility study-s = 1, : 1,5 . , : 1,5, 1,6 : 1. Modification of the terms of financing operational analysis j = 1-costs of additional:  general re-analysis and complementary research;  land pre-purchasing analysis, soil property tests, checking soil pollution and possible protections, as well as the risk of land purchase costs and the final purchase price;  commissions for intermediaries and often remediation;  expertise and structural survey of existing buildings to be secured;  evaluation of the scale and size of the existing paid land rights, land servitude, and/or transit for gestors, etc.
2. Architectural survey-incorrect description of the scope of the reconstruction j = 2:  extra costs of additional analyzing and assessing of the type and scope of reconstruction of existing infrastructure.
3. Technical conditions of connecting utilities differ significantly from assumptions j = 3:  additional costs of re-analysis of technical conditions for connection to the system of utilities, e.g., water supply and sewerage, energy, communication technology, gas, etc., can significantly change costs of the project. As part of the revenue analysis, it is necessary to analyze probabilistic characteristics of revenue random variables depending on internal and external random disturbances related to the payment of revenues tranches. The random disturbances of revenues reflect the influence of likely random conditions that may exist in a given place, environment, or systemic situation. They also depend on financial market stability during the project implementation and revenue payment. Taking all mentioned terms, the impact of disturbances was projected in accordance with likely prices on domestic and foreign property market, as well as probable conditions and quality of business environment. In the considered situation, the set of tranches may be disturbed by relevant set of disturbances , , , : 1,2, … , , 1,2, … , . In the result, revenues paid in tranches may randomly change. In the analyzed case, the sets as well as disturbances , that belong to them are relatively independent of each other. Each set of disturbances , correspond with a particular tranche . This means that the execution of each tranche ∈ may be randomly affected by each threat , ∈ .
For the residential housing development sets 5. Changing of economic and business conditions and deterioration of payment terms j = 5:  possible direct changes of any costs of employment, core workers and auxiliary workers, work of machines, and auxiliary equipment, as well as goods and services.
The random disturbances of costs and revenues reflect the influence of likely conditions of tasks execution and tranches payment. In the various random situations, disturbances can arise with different probabilities, and they can have distinct severity on the project implementation (see Ding, L., Zhou, Y., Akinci, B., 2014 [21]). This means that random implementation conditions directly decide the probability of occurrence , and severity , of disturbances , . Disturbances of costs , , 1,2, … , , 1,2, … , that belong to the subsets , or disturbances , , 1,2, … , , 1,2, … , that belong to the set E, may emerge with probability , ∈ 0,1 and severity , 0,1 , and they may variously impact the execution of tasks ∈ . The disturbances of revenues , , 1,2, … , , 1,2, … , , or 1,2, … , that belong to the set may emerge with probability , ∈ 0,1 and severity , 0,1 and may variously impact payment of tranches ∈ . The probability and severity of the disturbances for costs and revenues of the residential housing development should be estimated by construction and financial experts based on their knowledge, experience, and even intuition. Based on that evaluation, the influences of disturbances on project costs and revenues can be estimated. Depending on values of the disturbances' probability and severity, costs of task execution and revenues paid in tranches may change in varying degree. Degree of average random changes of costs and revenues can be estimated by the use of probabilistic coefficients of optimism and probabilistic coefficients of pessimism for costs and revenues, respectively. The probabilistic coefficients of cost optimism , 1,2, … , reflect likely decreased costs of tasks ∈ due to the probable improvement of implementation conditions. The probabilistic coefficients of costs pessimism , 1,2, … , reflect likely increased costs of tasks ∈ due to the probable degradation of implementation conditions. Average random impact of disturbances , , 1,2, … , , 1,2, … , on costs of tasks ∈ can be calculated by using formulas: 1. Average probability , and average severity of disturbances , ∈ , 1,2, … , , 1,2 … , , which may randomly change costs ∈ of the implementation of tasks ∈ : 2. Probabilistic coefficients of cost optimism ∈ 0,1 and cost pessimism ∈ 0,1 , 1,2, … , : Similarly, the probabilistic coefficients of revenue optimism 1,2, … , reflect the likely increase of revenues paid in tranches ∈ due to the probable improvement of business and payment conditions. The probabilistic coefficients of revenue pessimism , 1,2, … , reflect the likely decrease of revenues paid in tranches ∈ due to the probable degradation of business and payment conditions. Average random impact of disturbances , , 1,2, … , , 1,2, … , on revenues tranches payment can be calculated by using formulas: 1. Probabilistic coefficients of revenue pessimism 0,1 and revenue optimism 0,1 , 1,2, … , : Data depicted above allow comprehensively described conditions of the project implementation. In case of the residential housing development costs, the probability , and severity , as well as coefficients of optimism and pessimism have been estimated for all disturbances , that may disrupt execution of tasks that is for s = 1, 2, 3, 4, 1,22 and 1, 6 , 1, 5 , 1, 5 , 1, 5 . For the residential housing development revenues, the probability , and severity , , as well as coefficients of optimism and pessimism , have been estimated for all disturbances , that may disrupt payment of tranches that is for 1,4 and 1,5.
Random factors of optimism and pessimism of costs and revenues allow for comprehensive randomization of the primary initial data and thus take into account the impact of disturbances on the course and results of the project implementation.

Randomized Costs of Tasks and Revenues of Tranches
In reality, costs of task execution and revenue tranches payment are random variables of costs of carrying out tasks and random variables of revenue tranches payment. Such quantities (see, e.g., Benjamin, J. R. and Cornell, C. A. 2014 [24]) should be described by means of appropriate probability density functions or probability distribution functions. Unfortunately, these functions in an analyzed situation are unknown or are virtually impossible to directly elaborate. In that case, probabilistic characteristic of costs and revenues as random variables have been developed by the use of the data randomization method. With this end in view, values of primary initial costs , 1,2, … , and primary initial revenues , Estimated in this way, values of the quantities were used for calculations of the randomized project total cost and overall revenue.

Randomized Total Cost and Overall Revenue of the Residential Housing Development
The total cost and overall revenue of the residential housing development are random variables. The random variable of project total cost is equal to the sum of cost random variables , 1,2, … , of tasks execution. Alike, the random variable of project overall revenue is equal the sum of revenue random variables , 1,2, … , paid in tranches . The values of random total cost, among others, depend on the dependence between the added random variables . The values of random overall revenue, among others, depend on dependence between the analyzed random variables . Taking into account rules and a way of tasks execution and tranches payment, one can confirm that individual tasks are executed and particular tranches are paid relatively independently of each other. They are physically relatively independent of each other. So, one can conclude that random variables , 1,2, … , and random variables , 1,2, … , are independent and uncorrelated. These variables also take nonzero values. In this case, the project total expected cost is the sum of expected tasks costs , 1,2, … , incurred on an execution of all project tasks ∈ . Similarly, the project overall expected revenue is the sum of expected revenues , 1,2, … , paid in all project tranches ∈ . For the residential housing development, these quantities can be estimated as follows: 1. Expected value of the project total cost : (9) 2. Variance of the project total cost : 3. Expected value of the project overall revenue : (11) 4. Variance of the overall project revenue : (12) Randomized data of costs and revenues of the residential housing development implementation have been tallied in Tables 3 and 4 in Results section, respectively. Calculated in the above way, the expected total cost and the expected overall revenue represent only a particular possible case. This means that values and describe only this one case of the project implementation. The range of probable changings of these values is interesting. These variations were measured by using coefficients of the risk of total cost p(k) and the risk of overall revenue p(d). Values of these quantities were calculated assuming student's t-distribution functions for the random variable of total cost and for the random variable of overall revenue. In accordance with the results of comprehensive analysis, the risk measure of total cost is the probability that the actual total cost of the project is lesser than k. The risk measure of overall revenue is the probability that the actual overall revenue of the project is greater than d. Values of and , according to the comparative values k and d, can be calculated as follows: 1. Cost risk (contingency) of the project : -means probability that the real total cost should be less than k.
2. Revenue risk (contingency) of the project : -means probability that the real overall revenue should be greater than d.
Changes of the cost risk depending on comparative costs k and changes of the revenue risk depending on comparative revenues d are presented in Figure 1 in the Results section. Classical and well-known estimation of the net present value was presented in many publications, e.g., Gorlewski, B. 2015 [17], JASPERS. 2008 [19], and Skov N. W. 1994 [26]. Unfortunately, classical approaches do not sufficiently allow the consideration of random conditions of the project implementation. This is possible in the proposed method. The net present value of the residential housing development efficiency has been estimated as a random variable equal to a quotient of the random variable of project overall revenue and random variable of project total cost. The values of such quotient function one can estimate using an appropriate derived probability density function of quotient of these two random variables. Unfortunately, such function is unknown and, in practice, impossible to define. Fortunately, the random variable of expected value of the project overall revenue and the random variable of expected value of the project total cost are independent, uncorrelated, and take positive and nonzero values. When abovementioned conditions are fulfilled, an expected value of a quotient of two random variables, as it has been proved by Frishman, F. in 1971 [27], is equal to a quotient of expected values of these random variables. Therefore, based on the randomized data, the net present value of the residential housing development efficiency has been estimated as follows [28]: 1. Net present value of the residential housing development efficiency (NPE): , provided that 0 2. Variance of efficiency: * * * 3. Standard deviation of efficiency: 4. Expected gross profit E[Z]:

Results
The primary initial data of the residential housing development implementation 1 for costs have been listed in Table 1 and for revenues in Table 2.
Randomized data of costs and revenues of the residential housing development 1 implementation have been tallied in Tables 3 and 4, respectively.
Changes of the cost risk , depending on comparative costs k, and changes of the revenue risk , depending on comparative revenues d, are presented in Figure 1. In the charts, the risk of total cost and of the risk of overall revenue have been presented for notably good, actually expected, and extremely difficult project implementation conditions. Coefficients of the risk of total cost vary in the range of 0,1 . Final results of the net present value of the residential housing development efficiency have been tallied in Table 5. On the basis of the final results, the residential housing development efficiency was comprehensively assessed.
In order to present the practical application of the discussed method, the final results for two subsequent construction projects are presented below.

Investment 2
Changes of the cost risk depending on comparative costs k and changes of the revenue risk , depending on comparative revenues d, are presented in the Figure 2. Final results of the net present value of the residential housing development efficiency have been tallied in the Table 6. On the basis of the final results, the residential housing development efficiency has been comprehensively assessed.

Investment 3
Changes of the cost risk depending on comparative costs k and changes of the revenue risk , depending on comparative revenues d, are presented in the Figure 3. Final results of the net present value of the residential housing development efficiency have been tallied in Table 7. On the basis of the final results, the residential housing development efficiency has been comprehensively assessed.
The table with the final results for each of the analyzed investments summarizes and compares the final expected values, such as revenue, cost, efficiency, or gross profit, calculated using the ex-ante method. The table also lists the theoretically possible extreme values between which the expected values are. Particularly good conditions, i.e., maximum income at minimum costs, and extremely difficult conditions, i.e., minimum income at maximum costs.
A graphic image of the above values is presented in the graph. The curves of the expected costs and revenues are located between the extreme, minimum, and maximum costs and revenue curves.
The risk chart of the total cost and total revenue from the implementation of residential investments is constructed in the following structure: the abscissa is the values for costs and revenues, respectively. The ordinate axis in the left-hand system is the probability values that the corresponding costs will be lower than the comparative costs, and the right-hand side is that the probability values of revenues will be higher than the comparative ones. This layout allows you to summarize all cost and revenue curves on one chart.
The expected values of costs and revenues correspond to the ordinate of 0.5. Above and below the ordinate 0.5, we obtain the reading of the probability occurrence value and the corresponding costs and revenues. In such a system, the slope of the curves makes it possible to assess the speed of changes in the probability of threats, depending on possible changes in costs and revenues.

Discussion
In analyzed cases, the net present value of the residential housing development efficiency has been estimated on the basis of randomized primary initial data and is equal to: for investment 1: 1.11; for investment 2: 1.23; for investment 3: 1.16. The efficiency calculated on the basis of the primary initial data is equal to: for investment 1: 1.33; for investment 2: 1.24; for investment 3: 1.18. The efficiency calculated on the basis of realized data is equal to: for investment 1: 1.10; for investment 2: 1.23; for investment 3: 1.17.
It is easy to see that, in analyzed conditions of the investment 1 implementation, the randomized method of efficiency estimating allows for the determination of the project efficiency close to the actual value that has been calculated on the basis realized data. Such accuracy is especially important and reasonable when disturbances strongly interfere with the project implementation.
On the other hand, the investment 2 is a construction undertaking similar to the investment 1 in terms of size, location, and standard of investment execution. One can risk the statement that these are twin investments that were implemented under extremely different conditions. The investment 2 was carried out in a period of very good economic conditions on the housing construction market, and particularly good conditions were adopted. The investment was completed successfully, in accordance with all the assumed parameters.
All presented above estimations are considered also for exceptionally possible project implementation conditions. Such an approach allows for the determination of a bottom boundary and top boundary of the net present value of the residential housing development efficiency. The bottom boundary of the net present value of randomized efficiency of the residential housing development is estimated for the notably favorable implementation condition. For the described example, it is equal to, for investment 1: 1.68; for investment 2: 1.67; for investment 3: 1.29. The top boundary value of the efficiency is estimated for extremely difficult implementation conditions. For the described example, it is equal to: for investment 1: 0.85; for investment 2: 0.85; for investment 3: 0.86. Such information will certainly be useful in making operational decisions.

Conclusions
The method presented in the article complements the publications and studies to date in terms of the probabilistic approach to the issue of assessing the effectiveness of a construction project [29][30][31]. Three construction projects were subjected to detailed tests: the first-stable and achieved parameters as expected; the second-burdened with a significant loss of stability in the multithreaded aspect; the third-an investment that did not show over-expected deviations from the adopted assumptions. The method proposed in the article, assuming appropriate parameters, has confirmed the effectiveness and correctness of the predicted current net value of probabilistic efficiency (REP). All analyzed investments are real construction projects of the Warsaw developing market. The adopted initial parameters and the obtained final results were verified by the final settlements of the investment. The authors' recommendation is to apply the method to various types and scopes of completed investments, which will enable the development of a broad database for future analyses of new construction projects.
The final result of the method used will be a reliable database that can significantly improve the efficiency, quality, and sustainability requirements of future investments.