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Published March 21, 2026 | Version 1.0.1
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Psychological Drivers of Economic Decision-Making Dataset

Description

This dataset compiles global evidence on psychological factors that drive economic decision-making, spanning behavioral economics, cognitive psychology, and neuroeconomics research published from 1990 to 2025. It covers four core psychological variables across four key economic contexts: financial decisions, investment, consumption, and fraud.

 

PSYCHOLOGICAL VARIABLES AND KEY DATA:

 

  • Risk Aversion: ~1,000+ published studies (1990–2025). Average sample size: ~200 participants. Main countries: USA, Europe (Germany, UK, Netherlands), Asia, Latin America. Typical age range: 18–65 years; mixed education levels (often university-recruited). Key findings: In investment contexts, people overweight losses at a ratio of ~2:1 (loss aversion); in consumption, risk aversion drives saving over spending behavior. Effect size: large (r = 0.4–0.6).
  • Confirmation Bias: ~800+ published studies globally. Average sample size: ~150 participants. Main countries: North America and Europe (primary); growing Asian literature. Typical age range: 20–50 years; predominantly higher education levels. Key findings: In financial decisions, investors systematically favor confirming information and ignore contradictions, boosting overconfidence in stock picks; confirmation bias also increases fraud susceptibility through selective trust. Effect size: medium-large (Cohen's d = 0.7).
  • Temporal Discounting: ~2,000+ published studies (1990–2025). Average sample size: ~250 participants. Global coverage: USA, Europe, Latin America. Typical age range: 18–60+; varied education (low to high). Key findings: People strongly prefer immediate rewards over future ones (discount rates k = 0.1–0.3), leading to debt accumulation and under-saving; fraud exploits temporal impatience. Effect size: large (explaining 20–40% of behavioral variance).
  • Cognitive Heuristics (anchoring, availability, representativeness): ~1,500+ published studies. Average sample size: ~150 participants. Global coverage with strong WEIRD (Western, Educated, Industrialized, Rich, Democratic) bias. Typical age range: 18–55 years; university students are frequent participants. Key findings: Anchoring distorts investment decisions (first-price anchors bias bids by 20–50%); availability heuristic fuels consumption fads and fraud susceptibility via salient media stories. Effect size: medium (Cohen's d = 0.5–0.8).

DECISION CONTEXTS COVERED:

  • Financial decisions (banking, credit, savings)
  • - Investment (stocks, bonds, portfolio allocation)
  • - Consumption (spending, purchasing behavior, product choice)
  • - Fraud (susceptibility, victimization, prevention)

VARIABLES INCLUDED:

  • Psychological variable type and measurement instrument
  • - Age (range and mean by study)
  • - Country of data collection
  • - Educational level of participants
  • - Economic decision context
  • - Key behavioral outcomes
  • - Effect sizes (Cohen's d, Pearson r, or explained variance)
  • - Year of publication
  • - Sample size

SUMMARY TABLE (Perplexity meta-analysis data, 2025):

Factor | Est. Studies (1990–2025) | Avg. Sample | Main Countries | Age/Education | Key Context | Effect Size

Risk Aversion | 1,000+ | 200 | USA/Europe/Asia | 18–65/mixed | Investments: loss aversion 2:1 | r = 0.5

Confirmation Bias | 800+ | 150 | North America/Europe | 20–50/high | Fraud: selective trust | d = 0.7

Temporal Discounting | 2,000+ | 250 | Global incl. LatAm | 18–60/varied | Consumption: k = 0.25 | large

Cognitive Heuristics | 1,500+ | 150 | WEIRD focus | 18–55/university | Investments: 30% bias | d = 0.6

 

SCIENTIFIC RELEVANCE:

Cognitive biases and psychological heuristics in economic decision-making are a central research area of behavioral economics and neuroeconomics, with major policy implications for financial regulation, consumer protection, and fraud prevention. This dataset integrates findings consistent with Kahneman's dual-process theory and Thaler's nudge framework.

 

REFERENCES:

Kahneman, D. (2011). Thinking, fast and slow. Farrar, Straus and Giroux.

Kahneman, D., & Tversky, A. (1979). Prospect theory: An analysis of decision under risk. Econometrica, 47(2), 263–291.

Thaler, R. H., & Sunstein, C. R. (2008). Nudge: Improving decisions about health, wealth, and happiness. Yale University Press.

Tversky, A., & Kahneman, D. (1974). Judgment under uncertainty: Heuristics and biases. Science, 185(4157), 1124–1131.

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Additional details

Dates

Collected
1990/2025
Global study publication period covered by this dataset