counterfactual evaluation
The counterfactual is an estimate of what would have happened in the absence of the program, and for suitable programs this can be a key element of the evaluation design.
The idea that counterfactual reasoning is central to rational agency has surfaced in another way in cognitive science and artificial intelligence, where encoding counterfactual-supporting relationships has emerged as a major theory of mental representation (Chater et al. The 'counterfactual' measures what would have happened to beneficiaries in the absence of the intervention, and impact is estimated by comparing counterfactual outcomes to those observed under the intervention. Counterfactual Evaluation - I. Counterfactual Evaluation - II. 2010). in the conditional distribution of Y given X. Counterfactual analysis consists of evaluating the e ects of such changes. But utilizing a counterfactual survey may serve to illuminate changes that would otherwise go undetected. Counterfactual Evaluation ENVIEVAL Jyrki Aakkula, Janne Artell & Heini Toikkanen MTT Agrifood Research Finland Grant Agreement Number 312071 Contents 1) Basic concept of counterfactual evaluation 2) Common Monitoring and Evaluation Framework (CMEF) and counterfactuals 3) Observations from the review of RDP evaluation reports
Impact evaluation is the science of estimating the missing counterfactual; getting it right is the necessary first step in any evidence-based approach to policy design.
Counterfactual Learning - I. Counterfactual Learning - II.
Most counterfactual analyses have focused on claims of the form "event c caused event e", describing 'singular' or 'token' or 'actual' causation. The last part emphasizes that counterfactual learning is a rich research area, and discuss several important research topics, such as optimization for counterfactual learning, counterfactual meta learning, stable learning, fairness, unbiased learning to rank, offline policy evaluation. Counterfactual impact evaluation. Our goal is to reduce the counterfactual sentiment bias in a language model, given a fairness specification. Counterfactual Learning - I. Counterfactual Learning - II. In its simplest form, counterfactual impact evaluation (CIE) is a method of comparison which involves comparing the outcomes of interest of those having benefitted from a policy or programme (the "treated group") with those of a group similar in all respects to the treatment group (the "comparison/control . Going back to our fraud detection example, this would mean allowing a fraction of predicted fraudulent transactions to go through. The R package Counterfactual implements the methods of Cher-nozhukov et al. •The counterfactual represents how programme participants would have performed in the absence of the program •Problem: Counterfactual cannot be observed •Solution: We need to "mimic" or construct the counterfactual Different impact evaluation methodologies differ in how they construct the counterfactual Counterfactual The science of impact evaluation was the subject of a two-week technical training workshop organized jointly by the Transfer Project and the African Economic Research Consortium . New Directions for Evaluation, 122, 75-84. Some people however argue that in turbulent, complex situations, it can be impossible to develop an accurate estimate of what would have happened in the absence of an intervention, since this absence would have affected the situation in ways that cannot be predicted. 3 Counterfactual Evaluation of Sentiment Bias Fairness specification. (online via Cornell Library) One counterfactual might say to change feature A, the other counterfactual might say to leave A the same but change feature B, which is a contradiction. Let's call this fraction P(allow). The method of counterfactual impact evaluation allows to identify which part of the observed actual improvement (e.g. The slides for the tutorial are in four parts, and pdf's exported from Powerpoint are provided below. Many discussions of impact evaluation argue that it is essential to include a counterfactual. (2013) for counterfactual analysis. Counterfactual evaluation designs. ), Environmental program and policy evaluation. Other sources for general background on machine learning are: Kevin Murphy, "Machine Learning - a Probabilistic Perspective", MIT Press, 2012. Personalizer is built on the assumption that users' behavior (and thus rewards) are impossible to predict retrospectively (Personalizer can't know what would have happened if the user had been shown something different than what they did see), and only to learn from . A counterfactual survey is only appropriate for attitudinal or perception data and not for objective measures of skill or knowledge. Counterfactual analysis enables evaluators to attribute cause and effect between interventions and outcomes. In its simplest form, counterfactual impact evaluation (CIE) is a method of comparison which involves comparing the outcomes of interest of those having benefitted from a policy or programme (the "treated group") with those of a group similar in all respects to the treatment group (the "comparison/control . In another ap- On Quantitative Evaluations of Counterfactuals. So we will first review concepts from causal inference for counterfactual reasoning, assignment mechanisms, statistical estimation and learning theory. counterfactual training and evaluation (§3), hu-mans label Polyjuice counterfactuals rather than creating them from scratch. Evaluation: Outline • Evaluating Online Metrics Offline -A/B Testing (on-policy) Counterfactual estimation from logs (off-policy) • Approach 1: "Model the world" -Estimation via reward prediction increase in income) is attributable to the impact of the . Impact evaluations assess the degree to which changes in outcomes can be attrib-uted to an intervention rather than to other factors. The basic idea of counterfactual theories of causation is that the meaning of causal claims can be explained in terms of counterfactual conditionals of the form "If A had not occurred, C would not have occurred".
Counterfactual analysis enables evaluators to attribute cause and effect between interventions and outcomes. This issue of multiple truths can be addressed either by reporting all counterfactual explanations or by having a criterion to evaluate counterfactuals and select the best one.
policy. MIGUEL ANGEL LUQUE-FERNANDEZ A COUNTERFACTUAL APPROACH FOR IMPACT EVALUATION.
Using a counterfactual is the most rigorous approach in the right circumstances and can provide strong evidence for program outcomes. SIGIR Tutorial on Counterfactual Evaluation and Learning for Search, Recommendation and Ad Placement, 2016. MIGUEL ANGEL LUQUE-FERNANDEZ A COUNTERFACTUAL APPROACH FOR IMPACT EVALUATION.
One counterfactual might say to change feature A, the other counterfactual might say to leave A the same but change feature B, which is a contradiction.
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