PREDICTING FUTURE CRYPTOCURRENCY INVESTMENT TRENDS BY CONJOINT ANALYSIS

Purpose- Trade goods have been used as exchange mediums since the first humans. A thousand years ago currency was invented, and itbecame the dominant exchange medium in today’s world. The history of money did not end with the invention of fiat currency, such as USDollar or Euro. Cryptocurrency is the new development. It is not a trade good, nor a fiat money. “It is a new, experimental kind of money.”In this study our purpose is to analyze the factors influencing investors’ decision making on investment in cryptocurrencies by usingconjoint analysis. Studies suggest that some attributes of cryptocurrencies affect decisions of investors. In this study, the attributes atdifferent levels related to investors’ expectations on cryptocurrencies are examined.Methodology- In this study, conjoint analysis has been conducted. Conjoint method is a statistical analysis method and by using thismethod researchers determine the value of the attributes of a product or a feature for its consumers. Conjoint analysis is a method foranalyzing preferences of customers; it is a useful tool for predicting and determining responses of customers to new product features andtotally new products. In this case customers are investors and the new product is cryptocurrencies. Conjoint analysis has several types,choice based conjoint analysis is one of them and it is the preferred method for most of the researchers.Findings- Data collected for the study has been analyzed by using Marketing Engineering for Excel software. The findings of the studyindicate that profitability, bookkeeping and security are the most important attributes which influence expectations of investors incryptocurrencies. Five attributes with five levels each are chosen. It is predicted that these attributes are the most important indicators ofinvestor behavior. According to research findings, most important attribute for investors is profitability. This study confirms that themajority of investors have high profit expectation from crypto currencies. But study results also include some unexpected findings.Anonymity is not one of the main concerns for investors and almost equal number of investors prefers very high and very low level ofbookkeeping.Conclusion- The conjoint analysis gives a clear view on what investors expect from cryptocurrencies. The results show the attributes toimprove when developing a cryptocurrency.

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