Machine-learned models are often described as "black boxes". In many real-world applications however, models may have to sacrifice predictive power in favour of human-interpretability. When this is the case, feature engineering becomes a crucial task, which requires significant and time-consuming human effort. Whilst some features are inherently static, representing properties that cannot be influenced (e.g., the age of an individual), others capture characteristics that could be adjusted (e.g., the daily amount of carbohydrates taken). Nonetheless, once a model is learned from the data, each prediction it makes on new instances is irreversible - assuming every instance to be a static point located in the chosen feature space. There are many circumstances however where it is important to understand (i) why a model outputs a certain prediction on a given instance, (ii) which adjustable features of that instance should be modified, and finally (iii) how to alter such a prediction when the mutated instance is input back to the model. In this paper, we present a technique that exploits the internals of a tree-based ensemble classifier to offer recommendations for transforming true negative instances into positively predicted ones. We demonstrate the validity of our approach using an online advertising application. First, we design a Random Forest classifier that effectively separates between two types of ads: low (negative) and high (positive) quality ads (instances). Then, we introduce an algorithm that provides recommendations that aim to transform a low quality ad (negative instance) into a high quality one (positive instance). Finally, we evaluate our approach on a subset of the active inventory of a large ad network, Yahoo Gemini. © 2017 Association for Computing Machinery.

Interpretable predictions of tree-based ensembles via actionable feature tweaking / Tolomei, Gabriele; Silvestri, Fabrizio; Haines, Andrew; Lalmas, Mounia. - Part F129685:(2017), pp. 465-474. (Intervento presentato al convegno 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD 2017 tenutosi a Halifax; Canada) [10.1145/3097983.3098039].

Interpretable predictions of tree-based ensembles via actionable feature tweaking

Tolomei, Gabriele;Silvestri, Fabrizio;
2017

Abstract

Machine-learned models are often described as "black boxes". In many real-world applications however, models may have to sacrifice predictive power in favour of human-interpretability. When this is the case, feature engineering becomes a crucial task, which requires significant and time-consuming human effort. Whilst some features are inherently static, representing properties that cannot be influenced (e.g., the age of an individual), others capture characteristics that could be adjusted (e.g., the daily amount of carbohydrates taken). Nonetheless, once a model is learned from the data, each prediction it makes on new instances is irreversible - assuming every instance to be a static point located in the chosen feature space. There are many circumstances however where it is important to understand (i) why a model outputs a certain prediction on a given instance, (ii) which adjustable features of that instance should be modified, and finally (iii) how to alter such a prediction when the mutated instance is input back to the model. In this paper, we present a technique that exploits the internals of a tree-based ensemble classifier to offer recommendations for transforming true negative instances into positively predicted ones. We demonstrate the validity of our approach using an online advertising application. First, we design a Random Forest classifier that effectively separates between two types of ads: low (negative) and high (positive) quality ads (instances). Then, we introduce an algorithm that provides recommendations that aim to transform a low quality ad (negative instance) into a high quality one (positive instance). Finally, we evaluate our approach on a subset of the active inventory of a large ad network, Yahoo Gemini. © 2017 Association for Computing Machinery.
2017
23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD 2017
Actionable feature tweaking; Altering model predictions; Model interpretability; Random forest; Recommending feature changes; Software; Information Systems
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Interpretable predictions of tree-based ensembles via actionable feature tweaking / Tolomei, Gabriele; Silvestri, Fabrizio; Haines, Andrew; Lalmas, Mounia. - Part F129685:(2017), pp. 465-474. (Intervento presentato al convegno 23rd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD 2017 tenutosi a Halifax; Canada) [10.1145/3097983.3098039].
File allegati a questo prodotto
File Dimensione Formato  
Tolomei_Interpretable_2017.pdf

solo gestori archivio

Tipologia: Versione editoriale (versione pubblicata con il layout dell'editore)
Licenza: Tutti i diritti riservati (All rights reserved)
Dimensione 4.79 MB
Formato Adobe PDF
4.79 MB Adobe PDF   Contatta l'autore

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1382706
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 147
  • ???jsp.display-item.citation.isi??? 106
social impact