Patents by Inventor Darius Jose
Darius Jose has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).
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Publication number: 20220215409Abstract: A computer-implemented method, simulation and prediction system, and computer program product for advertising portfolio management are disclosed. An example method includes simulating, by executing a first simulated model utilizing a weight matrix, a first user provided scenario of an advertising campaign and collecting time series stimulus data and time series response data for marketing channels of the advertising campaign. The example method also includes reducing computational resource consumption associated with generating an updated version of the first simulated model by applying the time series stimulus data and the time series response data to the first simulated model to generate a second simulated model and simulating, by executing the second simulated model, a second user provided scenario of the advertising campaign to determine an effect of a change in a marketing media spend value of a first marketing channel on other ones of the marketing channels of the advertising campaign.Type: ApplicationFiled: March 28, 2022Publication date: July 7, 2022Inventors: Anto Chittilappilly, Payman Sadegh, Madan Bharadwaj, Darius Jose, Rakesh Pillai
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Patent number: 11288684Abstract: A computer-implemented method, simulation and prediction system, and computer program product for advertising portfolio management. Embodiments commence upon receiving data comprising a plurality of marketing stimulations and respective measured responses, both pertaining to a first time period. A computer is used to form a multi-channel simulation model, where the simulation model accepts the marketing stimulations then outputs simulated responses. The simulation model is used for determining cross-channel weights to apply to the respective measured responses pertaining to the first time period. The simulation model is updated to reflect updated marketing stimulations pertaining to a second time period. The updated marketing stimulations overwrite some of the plurality of marketing stimulations captured in the first time period.Type: GrantFiled: July 2, 2014Date of Patent: March 29, 2022Assignee: The Nielsen Company (US), LLCInventors: Anto Chittilappilly, Payman Sadegh, Madan Bharadwaj, Darius Jose, Rakesh Pillai
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Publication number: 20180005261Abstract: A system and method for allocating credit for an advertising conversion among various advertising touchpoints encounter by the consumer is provided. The system and method comprise receiving data pertaining to touchpoints and conversions of an advertising campaign across multiple channels. Users are correlated across the channels and the various conversions, touchpoints, and touchpoint attributes are identified. Each touchpoint attribute and touchpoint attribute value is assigned a weight. An attribution algorithm is selected, and coefficients are calculated using the assigned weights. The algorithm is executed and true scores corresponding to the touchpoints encountered by each converting user are computed.Type: ApplicationFiled: March 7, 2013Publication date: January 4, 2018Inventors: Anto Chittilappilly, Madan Bharadwaj, Payman Sadegh, Darius Jose
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Publication number: 20170300959Abstract: A system and method for allocating credit for an advertising conversion among various advertising touchpoints encounter by the consumer is provided. The system and method comprise receiving data pertaining to touchpoints and conversions of an advertising campaign across multiple channels. Users are correlated across the channels and the various conversions, touchpoints, and touchpoint attributes are identified. Each touchpoint attribute and touchpoint attribute value is assigned a weight. An attribution algorithm is selected, and coefficients are calculated using the assigned weights. The algorithm is executed and true scores corresponding to the touchpoints encountered by each converting user are computed.Type: ApplicationFiled: March 7, 2013Publication date: October 19, 2017Inventors: Anto Chittilappilly, Madan Bharadwaj, Payman Sadegh, Darius Jose
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Publication number: 20170300832Abstract: A method, system, and computer program product for advertising portfolio management. The method form processes steps for determining effectiveness of marketing stimulations in a plurality of marketing channels included in a marketing campaign. The method commences upon receiving data comprising a plurality of marketing stimulations and respective measured responses, then determining from the marketing stimulations and the respective measured responses, a set of cross-channel weights to apply to the respective measured responses, where the cross-channel weights are indicative of the influence that a particular stimulation applied to a first channel has on the measure responses of other channels. The cross-channel weights are used in calculating the effectiveness of a particular marketing stimulation over an entire marketing campaign.Type: ApplicationFiled: May 23, 2017Publication date: October 19, 2017Inventors: Anto Chittilappilly, Madan Bharadwaj, Darius Jose
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Publication number: 20160210657Abstract: A method, system, and computer program product for media spend management using real-time marketing campaign stimuli selection based on user response predictions. Embodiments commence upon identifying one or more users comprising an audience for one or more marketing campaigns. Observed touchpoint data records are collected based on audience responses to campaign stimuli. A collection of historical touchpoint data records are used to form a predictive model that captures relationships between the stimuli and the responses. At any moment in time, such as when a particular user is online, the predictive model is used to predict one or more next desired touchpoints based on a particular user's then-current online interactions. Marketing campaign stimuli that has a known historical effectiveness with respect to the desired touchpoints is reported. A marketing manager can increase the prevalence of such effective stimuli so as to increase the likelihood of desired responses by the particular user.Type: ApplicationFiled: December 17, 2015Publication date: July 21, 2016Inventors: Anto Chittilappilly, Payman Sadegh, Darius Jose
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Publication number: 20160210661Abstract: Methods for digital media campaign management. Embodiments determine a set of channel spend allocation values for a plurality of media channels based on a predictive model derived from observed channel response measurements. A stream of one or more touchpoint attribute records that characterize user responses to the media channels are captured and used to calibrate further incoming touchpoint attribute records. The calibrated incoming touchpoint attribute records are used to generate a calibrated touchpoint response predictive model. Outputs of the calibrated touchpoint response predictive model are used to adjust spending in digital media campaigns so as to increase effectiveness. Some embodiments perform calibration by analyzing a series of observed touchpoint events and then reducing the credit applied to the touchpoint events that are farthest from respective conversion events so as to reconcile the touchpoint observations with observed spending in media campaign.Type: ApplicationFiled: December 22, 2015Publication date: July 21, 2016Inventors: Anto Chittilappilly, Payman Sadegh, Rakesh Pillai, Darius Jose
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Publication number: 20160210659Abstract: Methods for digital media campaign management. Embodiments determine a set of channel spend allocation values for a plurality of media channels based on a predictive model derived from observed channel response measurements. A stream of one or more touchpoint attribute records that characterize user responses to the media channels are captured and used to calibrate further incoming touchpoint attribute records. The calibrated incoming touchpoint attribute records are used to generate a calibrated to touchpoint response predictive model. Outputs of the calibrated touchpoint response predictive model are used to adjust spending in digital media campaigns so as to increase effectiveness. Some embodiments perform calibration by analyzing a series of observed touchpoint events and then reducing the credit applied to the touchpoint events that are farthest from respective conversion events so as to reconcile the touchpoint observations with observed spending in media campaign.Type: ApplicationFiled: December 22, 2015Publication date: July 21, 2016Inventors: Anto Chittilappilly, Payman Sadegh, Rakesh Pillai, Darius Jose
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Publication number: 20160189205Abstract: A method, system, and computer program product for forming and validating a predictive model. The predictive model is based on empirically-determined data taken from one or more user encounters. A first portion of a set of user data corresponds to a first set of respective users that have performed at least some first conversion activity after experiencing a touchpoint encounter. A second set of user data corresponds to second respective users that have experienced at least one of the touchpoint encounters. The user data from the first portion are parsed to identify characteristics that are used for calculating propensity to convert scores. The cookies and scores are used to generate a predictive model that forms a prediction for a given user to convert. The predictive model is validated by comparing the predictions to empirically-determined conversion data (e.g., taken from the second set of user data).Type: ApplicationFiled: December 30, 2014Publication date: June 30, 2016Inventors: Anto Chittilappilly, Payman Sadegh, Darius Jose
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APPORTIONING A MEDIA CAMPAIGN CONTRIBUTION TO A MEDIA CHANNEL IN THE PRESENCE OF AUDIENCE SATURATION
Publication number: 20160055519Abstract: A method, system, and computer program product for managing Internet advertising campaigns. Embodiments commence upon receiving (e.g., over a network) advertisement touchpoint data pertaining to a plurality of touchpoints. The advertisement touchpoint data comprises measured stimulation data (e.g., impressions) and measured response data (e.g., conversions). The stimulation data and response data is formatted into an initial succession of candidate touchpoint contribution values where each of the individual touchpoints contributes its respective portion of the total contribution from the total set of measured responses. A non-linear model is applied over the succession of candidate touchpoint contribution values to form a non-linear succession of candidate touchpoint contributions. Individual touchpoints receive an apportionment based on the non-linear succession of candidate touchpoint contributions.Type: ApplicationFiled: August 22, 2014Publication date: February 25, 2016Inventors: Anto Chittilappilly, Payman Sadegh, Darius Jose -
Patent number: 9183562Abstract: A system and method for allocating credit for an advertising conversion among various advertising touchpoints encounter by the consumer is provided. The system and method comprise receiving data pertaining to touchpoints and conversions of an advertising campaign across multiple channels. Users are correlated across the channels and the various conversions, touchpoints, and touchpoint attributes are identified. Each touchpoint attribute and touchpoint attribute value is assigned a weight. An attribution algorithm is selected, and coefficients are calculated using the assigned weights. The algorithm is executed and true scores corresponding to the touchpoints encountered by each converting user are computed.Type: GrantFiled: June 8, 2012Date of Patent: November 10, 2015Assignee: VISUAL IQ, INC.Inventors: Anto Chittilappilly, Madan Bharadwaj, Payman Sadegh, Darius Jose
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Publication number: 20150186925Abstract: A series of techniques, methods, systems, and computer program products for advertising portfolio management is disclosed herein. More specifically, the herein disclosed techniques enable receiving data comprising a plurality of marketing stimulations, and receiving data comprising a plurality of engagement metrics. The received data is analyzed to determine a set of engagement weights associated with the engagement metrics. The determined engagement weights are in turn used to calculate the effectiveness of particular marketing stimulations through a set of marketing channels. Additional data in the form of measured responses (e.g., sales figures, survey results, etc.) are used to form a learning model wherein the learning model comprises one or more of, a stimulus-response predictor, a stimulus-engagement predictor, and an engagement-response predictor.Type: ApplicationFiled: December 29, 2014Publication date: July 2, 2015Inventors: Anto Chittilappilly, Darius Jose
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Publication number: 20150186926Abstract: A computer-implemented method, simulation and prediction system, and computer program product for advertising portfolio management. Embodiments commence upon receiving data comprising a plurality of marketing stimulations and respective measured responses, both pertaining to a first time period. A computer is used to form a multi-channel simulation model, where the simulation model accepts the marketing stimulations then outputs simulated responses. The simulation model is used for determining cross-channel weights to apply to the respective measured responses pertaining to the first time period. The simulation model is updated to reflect updated marketing stimulations pertaining to a second time period. The updated marketing stimulations overwrite some of the plurality of marketing stimulations captured in the first time period.Type: ApplicationFiled: July 2, 2014Publication date: July 2, 2015Inventors: Anto Chittilappilly, Payman Sadegh, Madan Bharadwaj, Darius Jose, Rakesh Pillai
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Publication number: 20150186924Abstract: A method, system, and computer program product for advertising portfolio management. The method form processes steps for determining effectiveness of marketing stimulations in a plurality of marketing channels included in a marketing campaign. The method commences upon receiving data comprising a plurality of marketing stimulations and respective measured responses, then determining from the marketing stimulations and the respective measured responses, a set of cross-channel weights to apply to the respective measured responses, where the cross-channel weights are indicative of the influence that a particular stimulation applied to a first channel has on the measure responses of other channels. The cross-channel weights are used in calculating the effectiveness of a particular marketing stimulation over an entire marketing campaign.Type: ApplicationFiled: December 31, 2013Publication date: July 2, 2015Inventors: Anto Chittilappilly, Payman Sadegh, Darius Jose
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Publication number: 20140257972Abstract: A system and method for allocating credit for an advertising conversion among various advertising touchpoints encounter by the consumer is provided. The system and method comprise receiving data pertaining to touchpoints and conversions of an advertising campaign across multiple channels. Users are correlated across the channels and the various conversions, touchpoints, and touchpoint attributes are identified. Each touchpoint attribute and touchpoint attribute value is assigned a weight. An attribution algorithm is selected, and coefficients are calculated using the assigned weights. The algorithm is executed and true scores corresponding to the touchpoints encountered by each converting user are computed.Type: ApplicationFiled: March 7, 2013Publication date: September 11, 2014Inventors: Anto Chittilappilly, Madan Bharadwaj, Payman Sadegh, Darius Jose
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Publication number: 20140257966Abstract: A system and method for allocating credit for an advertising conversion among various advertising touchpoints encounter by the consumer is provided. The system and method comprise receiving data pertaining to touchpoints and conversions of an advertising campaign across multiple channels. Users are correlated across the channels and the various conversions, touchpoints, and touchpoint attributes are identified. Each touchpoint attribute and touchpoint attribute value is assigned a weight. An attribution algorithm is selected, and coefficients are calculated using the assigned weights. The algorithm is executed and true scores corresponding to the touchpoints encountered by each converting user are computed.Type: ApplicationFiled: March 7, 2013Publication date: September 11, 2014Inventors: Anto Chittilappilly, Madan Bharadwaj, Payman Sadegh, Darius Jose