Optimizing investment performance through analysis of investors behavioral factors
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Abstract
This research explores the impact of behavioral factors on investment decisions and
Investment Performance at the Nepal Stock Exchange (NEPSE). The primary objective is
to identify and analyze these factors to optimize Investment Performance in an emerging
market context. The study employs a combination of quantitative and qualitative
methods, including self-completion questionnaires and semi-structured interviews, to
gather data from individual investors at NEPSE. Statistical techniques such as Factor
Analysis, Cronbach‘s Alpha Test, and Structural Equation Modeling (SEM) are used for
data analysis.
The findings reveal that behavioral factors such as heuristics (overconfidence, gambler‘s
fallacy, anchoring, and availability bias), prospect factors (loss aversion, regret aversion,
and mental accounting), market factors (price changes, market information, and past
trends of stocks), and herding factors (following other investors' decisions) significantly
influence investment decisions. Most behavioral factors have a moderate impact on
investment decisions, with market factors having the highest influence. Heuristic and
herding behaviors positively impact investment performance, while prospect behaviors
also show a positive correlation.
The study concludes that understanding and managing these behavioral factors can
significantly enhance investment performance. Recommendations for investors include
maintaining balanced confidence, leveraging reliable investment partners, and
considering prior losses for future decisions. The study contributes to the field of
behavioral finance by providing empirical evidence on the impact of behavioral factors on
Investment Performance in an emerging market context, offering practical insights for
investors, financial advisors, and policymakers.
Keywords: Behavioral Finance, Investment Decisions, Investment Performance, NEPSE,
Emerging Market
