Adaptive Anchoring Model: How Static and Dynamic Presentations of Time Series Influence Judgments and Predictions
Authored by Krasimira Tsaneva-Atanasova, Petko Kusev, Schaik Paul van, Asgeir Juliusson, Nick Chater
Date Published: 2018
DOI: 10.1111/cogs.12476
Sponsors:
United Kingdom Economic and Social Research Council (ESRC)
Nuffield Foundation
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Model Documentation:
Other Narrative
Model Code URLs:
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Abstract
When attempting to predict future events, people commonly rely on
historical data. One psychological characteristic of judgmental
forecasting of time series, established by research, is that when people
make forecasts from series, they tend to underestimate future values for
upward trends and overestimate them for downward ones, so-called
trend-damping (modeled by anchoring on, and insufficient adjustment
from, the average of recent time series values). Events in a time series
can be experienced sequentially (dynamic mode), or they can also be
retrospectively viewed simultaneously (static mode), not experienced
individually in real time. In one experiment, we studied the influence
of presentation mode (dynamic and static) on two sorts of judgment: (a)
predictions of the next event (forecast) and (b) estimation of the
average value of all the events in the presented series (average
estimation). Participants' responses in dynamic mode were anchored on
more recent events than in static mode for all types of judgment but
with different consequences; hence, dynamic presentation improved
prediction accuracy, but not estimation. These results are not
anticipated by existing theoretical accounts; we develop and present an
agent-based modelthe adaptive anchoring model (ADAM)to account for the
difference between processing sequences of dynamically and statically
presented stimuli (visually presented data). ADAM captures how variation
in presentation mode produces variation in responses (and the accuracy
of these responses) in both forecasting and judgment tasks. ADAM's model
predictions for the forecasting and judgment tasks fit better with the
response data than a linear-regression time series model. Moreover, ADAM
outperformed autoregressive-integrated-moving-average (ARIMA) and
exponential-smoothing models, while neither of these models accounts for
people's responses on the average estimation task.
Tags
Decision-Making
Misperception
heuristics
Prediction
Experience
Judgment
Forecasts
Adjustment
Description
Trend
Behavioral
forecasting
Exponential-growth
Risky choice
Free-recall
Base
rates
Extrapolation