Automatically Assessing Personality from Speech

Subscribers:
344,000
Published on ● Video Link: https://www.youtube.com/watch?v=j0gM8dW1QHA



Duration: 1:03:59
303 views
5


In this talk, we present results on applying a personality assessment paradigm to speech input, and compare human and automatic performance on this task. We cue a professional speaker to produce speech using different personality profiles and encode the resulting vocal personality impressions in terms of the Big Five NEO-FFI personality traits. We then have human raters, who do not know the speaker, estimate the five factors. We analyze the recordings using signal-based acoustic and prosodic methods and observe high consistency between the acted personalities, the raters� assessments, and initial automatic classification results. We further validate the application of our paradigm to speech input, and extend it towards text independent speech. We show that human labelers can consistently label speech data generated across multiple recording sessions with respect to personality, and investigate further which of the 5 scales in the NEO-FFI scheme can be assessed from speech, and how a manipulation of one scale influences the perception of another. Finally, we present a top-down clustering of human labels of personality traits derived from speech, which will be useful in future experiments on automatic classification of personality traits. This presents a first step towards being able to handle personality traits in speech, which we envision will be used in future voice-based communication between humans and machines.




Other Videos By Microsoft Research


2016-07-27Experiences and Progresses on Binary Translation system for Loongson Processor
2016-07-27Optimization Problems in Network Connectivity
2016-07-27Gaussian Processes for Inference with Implicit Likelihoods
2016-07-273D Object Tracking for Augmented Reality: Handling Multiple Objects, Motion-Blur, & Lack of Texture
2016-07-27Robust Shallow Semantic Parsing of Text
2016-07-27Enabling Trustworthy Users
2016-07-27Video-based In Situ Tagging for Mobile Augmented Reality
2016-07-27Metric Learning and Manifolds: Preserving the Intrinsic Geometry
2016-07-27Making money with �free� apps
2016-07-27Collecting a Heap of Shapes
2016-07-27Automatically Assessing Personality from Speech
2016-07-27Ten User Experience Best Practices for Windows Phone Application Development
2016-07-27Generalization Bounds and Consistency for Latent-Structural Probit and Ramp Loss
2016-07-27Structured Prediction in NLP: Dual Decomposition and Structured Sparsity
2016-07-27High Availability for Database Systems in Cloud Computing Environments
2016-07-27Batches: Unified and Efficient Access to RPC, WS, and SQL Services
2016-07-27Reliable Multithreading through Schedule Memoization
2016-07-27Generalized Oblivious Transfer (GOT)
2016-07-27From Contextual Search to Automatic Content Generation: Scaling Human Editorial Judgment
2016-07-27Bound Analysis of Imperative Programs with the Size-change Abstraction
2016-07-27A mobile context monitoring platform for dynamic mobile computing environments



Tags:
microsoft research