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Using Time-Varying Motion Stimuli to Explore Decision Dynamics. Marius Usher, Juan Gao, Rebecca Tortell, and James L. McClelland. Time-accuracy curves in the time-controlled paradigm. Easy. Medium. Hard. Curve for each condition is well fit by a shifted exponential approach to asymptote:
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Using Time-Varying Motion Stimuli to Explore Decision Dynamics Marius Usher, Juan Gao, Rebecca Tortell, andJames L. McClelland
Time-accuracy curves in the time-controlled paradigm Easy Medium Hard Curve for each condition is well fit by a shiftedexponential approach to asymptote: d’(t) = d’asy(1-e-(t-T0)/t)
X2 X1 r1 r2 Usher and McClelland (2001)Leaky Competing Accumulator Model • Inspired by known neural mechanisms • Addresses the process of decidingbetween two alternatives basedon external input (r1 + r2 = 1) with leakage, mutual inhibition, and noise: dx1/dt = r1-k(x1)–bf(x2)+x1 dx2/dt = r2-k(x2)–bf(x1)+x2 f(x) = [x]+
Leak and Inhibition Dominant LCA:Both can fit the d’ data • Participant chooses the most active accumulator when the go cue occurs • This is equivalent to choosing response 1 iff x1-x2 > 0 • Non-linearity at 0 is neglected for analytic tractability • Graphs track this difference variable for a single difficulty level when the motion is to the left (Red) or to the right (Blue) • d’(t) = (m1(t) – m2(t))/s(t); s(0) > 0
Kiani, Tanks and Shadlen 2008 Random motion stimuli of different coherences. Stimulus duration follows an exponential distribution. ‘go’ cue can occur at stimulus offset; response must occur within 500 msec to ear reward.
The earlier the pulse, the more it matters(Kiani et al, 2008)
These results rule out leak dominance Still viable X
Our Preferred Model: Non-Linear LCA , with Inhibition > Leak Final time slice
However, there is another interpretation x t > Bounded Integration (Ratcliff 1999; Kiani et.al.2008)
Our Questions • Can we distinguish the models? • Can we push around the effect?
Our Experiments Repeat Kiani 2008 with human subjects. The effect was small...Let’s try a stronger manipulation. Now we have a big effect:Can we reverse or eliminate it?
Ongoing Investigations • Random dot motion stimuli, like those used by Shadlen and Newsome, Kiani et al, and many others. • Multiple coherences: 6.4%, 12.8%, 25.6%, 51.2% • Three participants per experiment, each run for up to 25 sessions. • Data shown are after performance stabilizes, after varying numbers of sessions. • Ongoing recruitment, Ongoing analysis…
Kiani Replication • Exponential distribution of trial durations • Go cue when motion stops • Participant must response within 300 msec of go cue and must be correct to earn a point • Pulse occurs on a subset of trials, at a random time within the trial: • Motion increment of +/-2% for 200 msec.
Three motion conditions crossed with 8 coherences. LCALD and BI both predict Early > Late Data shown are percent correct, averaged across coherences We include a switch condition with 6.4% and 12.8% coherences only (no right answer). LCALD and BI both predict %Early Choices > 50% Each participant has at least 600 trials per data point over at least 10 sessions. 1) Early 2) Late 3) Constant 4) Switch Experiment 2:A Stronger Manipulation Stimulus Duration
Take home message • Yes, it seems earlier > later in all three subjects with this time pressure. • But 2 of 3 participants show some sensitivity to late information even at longer durations, while one does not. • Model accounts for individual differences: • BI: Low vs. high bound • LCALD: strong vs. weak inhibition dominance
Our Experiments Repeat Kiani 2008 with human subjects. The effect was small...Let’s try a stronger manipulation. Now we have a big effect:Can we reverse or eliminate it?
Experiment 3: Time-limited integration without time pressure to respond • Same stimulus conditions as before. • New participants. • Only two procedural changes: • Uniform vs. exponential distribution of stimulus durations • Participants have a full second after the end of the stimulus to respond.
Our Questions • Can we distinguish the models? • Not yet • Can we push around the effect? • Yes
How do the models explain the data? • BI: participants can perform unbounded integration if there is no time pressure • LCALD: participants can balance leak and inhibition if there is no time pressure • In both cases, it appears that we have balanced, unbounded integration.
Two remaining questions • Can we create a situation in which we will observe leaky integration? • Very long trials? • Detect motion pulse in otherwise 0% background? • Why does accuracy level off with long integration times if there is perfect integration? • Between trial drift variance?? (Ratcliff, 1978).
The Bottom Line • The dynamics of information integration might not be fixed characteristics of the decision making mechanism • Instead, they may be tunable in response to task demands: • Leak vs. competition • Presence of a bound on integration • Etc.
X2 X1 r1 r2 The End