Literatures on property development evidence demographics and population as one of the main factors influence property development process. Demographic changes would affect the economic and the property market thus contributes to dramatic change that affects the generations. The differences of attitudes and values between generations resulted diversification of housing decisions and the choice made. The generations are the population categorised by the age cohort; namely The Baby Boomers, Generation X (Gen- X), Generation Y (Gen-Y) and Generation Z (Gen-Z). The aim of this study is to provide an in-depth overview on housing decisions of choices made between location, house and neighbourhood among Malaysian generations. This study employs mixed methods approaches with Selangor, Malaysia as case study. The data were analysed using the Pair-wise and Analytic Hierarchy Process (AHP). The analysis reveals the Malaysian generations’ housing choices as; (1) House; (2) Location and; (3) Neighbourhood. The findings show similarities and differences of housing decision by generations on the choices between location, house and neighbourhood. The findings is significant in providing better understanding to the actors of property development on the main housing choice attraction factors of the generations which useful for better housing provisions.
The construction industry is one of the most important industries for social and economic growth, as well as a source of wealth. Unfortunately, the construction industry has considerable costs, time, and quality issues, necessitating being resolved. This problem also happened in the Malaysian construction industry, mostly to meet the demands of infrastructure projects. Furthermore, over-processing refers to extra work done during the construction process that increases the likelihood of a project failing. This over-processing is caused by the consultant teams’ slow response time when a problem develops, as well as the site’s poor management system implementation. Lean construction (LC) is the alternative in resolving this non- physical construction wastes. LC is a constant enhancement to the construction processes in sustaining the organisation’s growth and profitability. This research aims to develop an LC tools framework that beneficial to future LC practitioners. This paper seeks to identify the most generated over-processing construction waste and the most LC tools to reduce over-processing construction waste on the site. This research uses a quantitative method approach, and the questionnaire survey has been sent to 310 G7 contractors registered with the Construction Industry Development Board Malaysia (CIDB) in Malaysia. A total of 116 questionnaires were returned, with a response rate of 37.4%. The findings revealed that the long approval process was the source of the majority of the site’s over-processing construction waste. Hence, management contracts, standard forms, total quality management, concurrent engineering and teamwork were the five most implemented LC tools by the LC practitioners in reducing over-processing waste. It is hoped that the outcomes of this research, able to help the LC practitioners deliver their projects. Thus, it would develop the future’s construction productivity towards a better quality of life.
Transparency is an essential precondition for containing corruption. Construction is prone to corruption as it involves a large number of participants. Corruption is a deviant behaviour of an individual that should be looked into. The objective of this paper is to study the behavioural factors that lead to corrupt acts based on the Model of Corrupt Action. Questionnaire survey is utilised to derive to the solution. The results show that behavioural factors concerning the achievement of a certain goal do not predict corrupt action but the desire factors represent an important antecedent of intention by which a strong predictor of particular behaviour.
Demographics and population have been evidenced as part of the key elements that affect property development. Changes in demographics specifically may influence the economy including the property market hence influences the generations. Behaviour and values divergences among various age groups (generations) resulted in a variance of housing choices and decisions made. The generations are the population categorised by the age cohort including the Baby Boomers, Generation X (Gen-X), Generation Y (Gen-Y) and Generation Z (Gen-Z). This study aims to offer a comprehensive overview of housing decisions via choices made between location, house, and neighbourhood between Malaysian generations. This study uses mixed methods approaches with the Selangor state as a case study. The Pair-wise and Analytic Hierarchy Process (AHP) methods of data analyses used for consumer behavioural decision-making studies were adopted in this study to determine the preferences of future housing choice between location, house and neighbourhood. The analysis uncovers house, location and neighbourhood as the prime housing choices factors of the Malaysian generations. The findings evidenced likeliness and differences of housing decision by generations on the choices made. Most importantly, the findings are significant in contributing better understanding and grant indications to the local authorities and housing developers on the main attraction factors of housing choice preferred by generations that may be very valuable for the enhancement of future Malaysian housing provisions.
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